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In statistics, maximum likelihood estimation (MLE) is a method of estimating the parameters of an assumed
probability distribution In probability theory and statistics, a probability distribution is the mathematical function that gives the probabilities of occurrence of different possible outcomes for an experiment. It is a mathematical description of a random phenomenon ...
, given some observed data. This is achieved by maximizing a
likelihood function The likelihood function (often simply called the likelihood) represents the probability of random variable realizations conditional on particular values of the statistical parameters. Thus, when evaluated on a given sample, the likelihood functi ...
so that, under the assumed
statistical model A statistical model is a mathematical model that embodies a set of statistical assumptions concerning the generation of sample data (and similar data from a larger population). A statistical model represents, often in considerably idealized form ...
, the observed data is most probable. The point in the
parameter space The parameter space is the space of possible parameter values that define a particular mathematical model, often a subset of finite-dimensional Euclidean space. Often the parameters are inputs of a function, in which case the technical term for ...
that maximizes the likelihood function is called the maximum likelihood estimate. The logic of maximum likelihood is both intuitive and flexible, and as such the method has become a dominant means of
statistical inference Statistical inference is the process of using data analysis to infer properties of an underlying distribution of probability.Upton, G., Cook, I. (2008) ''Oxford Dictionary of Statistics'', OUP. . Inferential statistical analysis infers properti ...
. If the likelihood function is differentiable, the
derivative test In calculus, a derivative test uses the derivatives of a function to locate the critical points of a function and determine whether each point is a local maximum, a local minimum, or a saddle point. Derivative tests can also give information ab ...
for finding maxima can be applied. In some cases, the first-order conditions of the likelihood function can be solved analytically; for instance, the
ordinary least squares In statistics, ordinary least squares (OLS) is a type of linear least squares method for choosing the unknown parameters in a linear regression model (with fixed level-one effects of a linear function of a set of explanatory variables) by the ...
estimator for a
linear regression In statistics, linear regression is a linear approach for modelling the relationship between a scalar response and one or more explanatory variables (also known as dependent and independent variables). The case of one explanatory variable is cal ...
model maximizes the likelihood when all observed outcomes are assumed to have Normal distributions with the same variance. From the perspective of
Bayesian inference Bayesian inference is a method of statistical inference in which Bayes' theorem is used to update the probability for a hypothesis as more evidence or information becomes available. Bayesian inference is an important technique in statistics, and ...
, MLE is generally equivalent to maximum a posteriori (MAP) estimation with
uniform A uniform is a variety of clothing worn by members of an organization while participating in that organization's activity. Modern uniforms are most often worn by armed forces and paramilitary organizations such as police, emergency services, ...
prior distributions (or a normal prior distribution with a standard deviation of infinity). In frequentist inference, MLE is a special case of an
extremum estimator In statistics and econometrics, extremum estimators are a wide class of estimators for parametric models that are calculated through maximization (or minimization) of a certain objective function, which depends on the data. The general theory of e ...
, with the objective function being the likelihood.


Principles

We model a set of observations as a random
sample Sample or samples may refer to: Base meaning * Sample (statistics), a subset of a population – complete data set * Sample (signal), a digital discrete sample of a continuous analog signal * Sample (material), a specimen or small quantity of ...
from an unknown joint
probability distribution In probability theory and statistics, a probability distribution is the mathematical function that gives the probabilities of occurrence of different possible outcomes for an experiment. It is a mathematical description of a random phenomenon ...
which is expressed in terms of a set of parameters. The goal of maximum likelihood estimation is to determine the parameters for which the observed data have the highest joint probability. We write the parameters governing the joint distribution as a vector \; \theta = \left \theta_,\, \theta_2,\, \ldots,\, \theta_k \right \; so that this distribution falls within a
parametric family In mathematics and its applications, a parametric family or a parameterized family is a family of objects (a set of related objects) whose differences depend only on the chosen values for a set of parameters. Common examples are parametrized (fam ...
\; \ \;, where \, \Theta \, is called the ''
parameter space The parameter space is the space of possible parameter values that define a particular mathematical model, often a subset of finite-dimensional Euclidean space. Often the parameters are inputs of a function, in which case the technical term for ...
'', a finite-dimensional subset of
Euclidean space Euclidean space is the fundamental space of geometry, intended to represent physical space. Originally, that is, in Euclid's ''Elements'', it was the three-dimensional space of Euclidean geometry, but in modern mathematics there are Euclidea ...
. Evaluating the joint density at the observed data sample \; \mathbf = (y_1, y_2, \ldots, y_n) \; gives a real-valued function, :\mathcal_(\theta) = \mathcal_(\theta; \mathbf) = f_(\mathbf; \theta) \;, which is called the
likelihood function The likelihood function (often simply called the likelihood) represents the probability of random variable realizations conditional on particular values of the statistical parameters. Thus, when evaluated on a given sample, the likelihood functi ...
. For
independent and identically distributed random variables In probability theory and statistics, a collection of random variables is independent and identically distributed if each random variable has the same probability distribution as the others and all are mutually independent. This property is usu ...
, f_(\mathbf; \theta) will be the product of univariate density functions: :f_(\mathbf; \theta) = \prod_^n \, f_k^\mathsf(y_k; \theta) ~. The goal of maximum likelihood estimation is to find the values of the model parameters that maximize the likelihood function over the parameter space, that is :\hat = \underset\,\mathcal_(\theta\,;\mathbf) ~. Intuitively, this selects the parameter values that make the observed data most probable. The specific value ~ \hat = \hat_(\mathbf) \in \Theta ~ that maximizes the likelihood function \, \mathcal_ \, is called the maximum likelihood estimate. Further, if the function \; \hat_ : \mathbb^ \to \Theta \; so defined is measurable, then it is called the maximum likelihood
estimator In statistics, an estimator is a rule for calculating an estimate of a given quantity based on observed data: thus the rule (the estimator), the quantity of interest (the estimand) and its result (the estimate) are distinguished. For example, the ...
. It is generally a function defined over the sample space, i.e. taking a given sample as its argument. A sufficient but not necessary condition for its existence is for the likelihood function to be
continuous Continuity or continuous may refer to: Mathematics * Continuity (mathematics), the opposing concept to discreteness; common examples include ** Continuous probability distribution or random variable in probability and statistics ** Continuous g ...
over a parameter space \, \Theta \, that is
compact Compact as used in politics may refer broadly to a pact or treaty; in more specific cases it may refer to: * Interstate compact * Blood compact, an ancient ritual of the Philippines * Compact government, a type of colonial rule utilized in Britis ...
. For an
open Open or OPEN may refer to: Music * Open (band), Australian pop/rock band * The Open (band), English indie rock band * Open (Blues Image album), ''Open'' (Blues Image album), 1969 * Open (Gotthard album), ''Open'' (Gotthard album), 1999 * Open (C ...
\, \Theta \, the likelihood function may increase without ever reaching a supremum value. In practice, it is often convenient to work with the
natural logarithm The natural logarithm of a number is its logarithm to the base of the mathematical constant , which is an irrational and transcendental number approximately equal to . The natural logarithm of is generally written as , , or sometimes, if ...
of the likelihood function, called the log-likelihood: : \ell(\theta\,;\mathbf) = \ln \mathcal_(\theta\,;\mathbf) ~. Since the logarithm is a
monotonic function In mathematics, a monotonic function (or monotone function) is a function between ordered sets that preserves or reverses the given order. This concept first arose in calculus, and was later generalized to the more abstract setting of order ...
, the maximum of \; \ell(\theta\,;\mathbf) \; occurs at the same value of \theta as does the maximum of \, \mathcal_ ~. If \ell(\theta\,;\mathbf) is differentiable in \, \Theta \,, the necessary conditions for the occurrence of a maximum (or a minimum) are :\frac = 0, \quad \frac = 0, \quad \ldots, \quad \frac = 0 ~, known as the likelihood equations. For some models, these equations can be explicitly solved for \, \widehat \,, but in general no closed-form solution to the maximization problem is known or available, and an MLE can only be found via
numerical optimization Mathematical optimization (alternatively spelled ''optimisation'') or mathematical programming is the selection of a best element, with regard to some criterion, from some set of available alternatives. It is generally divided into two subfi ...
. Another problem is that in finite samples, there may exist multiple
roots A root is the part of a plant, generally underground, that anchors the plant body, and absorbs and stores water and nutrients. Root or roots may also refer to: Art, entertainment, and media * ''The Root'' (magazine), an online magazine focusing ...
for the likelihood equations. Whether the identified root \, \widehat \, of the likelihood equations is indeed a (local) maximum depends on whether the matrix of second-order partial and cross-partial derivatives, the so-called
Hessian matrix In mathematics, the Hessian matrix or Hessian is a square matrix of second-order partial derivatives of a scalar-valued function, or scalar field. It describes the local curvature of a function of many variables. The Hessian matrix was developed ...
:\mathbf\left(\widehat\right) = \begin \left. \frac \_ & \left. \frac \_ & \dots & \left. \frac \_ \\ \left. \frac \_ & \left. \frac \_ & \dots & \left. \frac \_ \\ \vdots & \vdots & \ddots & \vdots \\ \left. \frac \_ & \left. \frac \_ & \dots & \left. \frac \_ \end ~, is negative semi-definite at \widehat, as this indicates local
concavity In calculus, the second derivative, or the second order derivative, of a function is the derivative of the derivative of . Roughly speaking, the second derivative measures how the rate of change of a quantity is itself changing; for example, ...
. Conveniently, most common
probability distribution In probability theory and statistics, a probability distribution is the mathematical function that gives the probabilities of occurrence of different possible outcomes for an experiment. It is a mathematical description of a random phenomenon ...
s – in particular the
exponential family In probability and statistics, an exponential family is a parametric set of probability distributions of a certain form, specified below. This special form is chosen for mathematical convenience, including the enabling of the user to calculate ...
– are logarithmically concave.


Restricted parameter space

While the domain of the likelihood function—the
parameter space The parameter space is the space of possible parameter values that define a particular mathematical model, often a subset of finite-dimensional Euclidean space. Often the parameters are inputs of a function, in which case the technical term for ...
—is generally a finite-dimensional subset of
Euclidean space Euclidean space is the fundamental space of geometry, intended to represent physical space. Originally, that is, in Euclid's ''Elements'', it was the three-dimensional space of Euclidean geometry, but in modern mathematics there are Euclidea ...
, additional restrictions sometimes need to be incorporated into the estimation process. The parameter space can be expressed as :\Theta = \left\ ~, where \; h(\theta) = \left h_(\theta), h_(\theta), \ldots, h_(\theta) \right\; is a vector-valued function mapping \, \mathbb^ \, into \; \mathbb^ ~. Estimating the true parameter \theta belonging to \Theta then, as a practical matter, means to find the maximum of the likelihood function subject to the constraint ~h(\theta) = 0 ~. Theoretically, the most natural approach to this
constrained optimization In mathematical optimization, constrained optimization (in some contexts called constraint optimization) is the process of optimizing an objective function with respect to some variables in the presence of constraints on those variables. The ob ...
problem is the method of substitution, that is "filling out" the restrictions \; h_, h_, \ldots, h_ \; to a set \; h_, h_, \ldots, h_, h_, \ldots, h_ \; in such a way that \; h^ = \left h_, h_, \ldots, h_ \right\; is a one-to-one function from \mathbb^ to itself, and reparameterize the likelihood function by setting \; \phi_ = h_(\theta_, \theta_, \ldots, \theta_) ~. Because of the equivariance of the maximum likelihood estimator, the properties of the MLE apply to the restricted estimates also. For instance, in a
multivariate normal distribution In probability theory and statistics, the multivariate normal distribution, multivariate Gaussian distribution, or joint normal distribution is a generalization of the one-dimensional ( univariate) normal distribution to higher dimensions. One ...
the
covariance matrix In probability theory and statistics, a covariance matrix (also known as auto-covariance matrix, dispersion matrix, variance matrix, or variance–covariance matrix) is a square matrix giving the covariance between each pair of elements of ...
\, \Sigma \, must be positive-definite; this restriction can be imposed by replacing \; \Sigma = \Gamma^ \Gamma \;, where \Gamma is a real
upper triangular matrix In mathematics, a triangular matrix is a special kind of square matrix. A square matrix is called if all the entries ''above'' the main diagonal are zero. Similarly, a square matrix is called if all the entries ''below'' the main diagonal are ...
and \Gamma^ is its
transpose In linear algebra, the transpose of a matrix is an operator which flips a matrix over its diagonal; that is, it switches the row and column indices of the matrix by producing another matrix, often denoted by (among other notations). The tr ...
. In practice, restrictions are usually imposed using the method of Lagrange which, given the constraints as defined above, leads to the ''restricted likelihood equations'' :\frac - \frac \lambda = 0 and h(\theta) = 0 \;, where ~ \lambda = \left \lambda_, \lambda_, \ldots, \lambda_\right\mathsf ~ is a column-vector of Lagrange multipliers and \; \frac \; is the
Jacobian matrix In vector calculus, the Jacobian matrix (, ) of a vector-valued function of several variables is the matrix of all its first-order partial derivatives. When this matrix is square, that is, when the function takes the same number of variable ...
of partial derivatives. Naturally, if the constraints are not binding at the maximum, the Lagrange multipliers should be zero. This in turn allows for a statistical test of the "validity" of the constraint, known as the Lagrange multiplier test.


Properties

A maximum likelihood estimator is an
extremum estimator In statistics and econometrics, extremum estimators are a wide class of estimators for parametric models that are calculated through maximization (or minimization) of a certain objective function, which depends on the data. The general theory of e ...
obtained by maximizing, as a function of ''θ'', the objective function \widehat(\theta\,;x). If the data are
independent and identically distributed In probability theory and statistics, a collection of random variables is independent and identically distributed if each random variable has the same probability distribution as the others and all are mutually independent. This property is usual ...
, then we have : \widehat(\theta\,;x)=\frac1n \sum_^n \ln f(x_i\mid\theta), this being the sample analogue of the expected log-likelihood \ell(\theta) = \operatorname , \ln f(x_i\mid\theta) \,/math>, where this expectation is taken with respect to the true density. Maximum-likelihood estimators have no optimum properties for finite samples, in the sense that (when evaluated on finite samples) other estimators may have greater concentration around the true parameter-value. However, like other estimation methods, maximum likelihood estimation possesses a number of attractive limiting properties: As the sample size increases to infinity, sequences of maximum likelihood estimators have these properties: *
Consistency In classical deductive logic, a consistent theory is one that does not lead to a logical contradiction. The lack of contradiction can be defined in either semantic or syntactic terms. The semantic definition states that a theory is consistent ...
: the sequence of MLEs converges in probability to the value being estimated. * Functional equivariance: If \hat is the maximum likelihood estimator for \theta , and if g(\theta) is any transformation of \theta , then the maximum likelihood estimator for \alpha = g(\theta ) is \hat = g(\hat ) . *
Efficiency Efficiency is the often measurable ability to avoid wasting materials, energy, efforts, money, and time in doing something or in producing a desired result. In a more general sense, it is the ability to do things well, successfully, and without ...
, i.e. it achieves the Cramér–Rao lower bound when the sample size tends to infinity. This means that no consistent estimator has lower asymptotic
mean squared error In statistics, the mean squared error (MSE) or mean squared deviation (MSD) of an estimator (of a procedure for estimating an unobserved quantity) measures the average of the squares of the errors—that is, the average squared difference between ...
than the MLE (or other estimators attaining this bound), which also means that MLE has asymptotic normality. * Second-order efficiency after correction for bias.


Consistency

Under the conditions outlined below, the maximum likelihood estimator is consistent. The consistency means that if the data were generated by f(\cdot\,;\theta_0) and we have a sufficiently large number of observations ''n'', then it is possible to find the value of ''θ''0 with arbitrary precision. In mathematical terms this means that as ''n'' goes to infinity the estimator \widehat converges in probability to its true value: : \widehat_\mathrm\ \xrightarrow\ \theta_0. Under slightly stronger conditions, the estimator converges
almost surely In probability theory, an event is said to happen almost surely (sometimes abbreviated as a.s.) if it happens with probability 1 (or Lebesgue measure 1). In other words, the set of possible exceptions may be non-empty, but it has probability 0. ...
(or ''strongly''): : \widehat_\mathrm\ \xrightarrow\ \theta_0. In practical applications, data is never generated by f(\cdot\,;\theta_0). Rather, f(\cdot\,;\theta_0) is a model, often in idealized form, of the process generated by the data. It is a common aphorism in statistics that ''
all models are wrong All or ALL may refer to: Language * All, an indefinite pronoun in English * All, one of the English determiners * Allar language (ISO 639-3 code) * Allative case (abbreviated ALL) Music * All (band), an American punk rock band * ''All'' (All ...
''. Thus, true consistency does not occur in practical applications. Nevertheless, consistency is often considered to be a desirable property for an estimator to have. To establish consistency, the following conditions are sufficient. The dominance condition can be employed in the case of i.i.d. observations. In the non-i.i.d. case, the uniform convergence in probability can be checked by showing that the sequence \widehat(\theta\mid x) is stochastically equicontinuous. If one wants to demonstrate that the ML estimator \widehat converges to ''θ''0
almost surely In probability theory, an event is said to happen almost surely (sometimes abbreviated as a.s.) if it happens with probability 1 (or Lebesgue measure 1). In other words, the set of possible exceptions may be non-empty, but it has probability 0. ...
, then a stronger condition of uniform convergence almost surely has to be imposed: : \sup_ \left\, \;\widehat(\theta\mid x) - \ell(\theta)\;\right\, \ \xrightarrow\ 0. Additionally, if (as assumed above) the data were generated by f(\cdot\,;\theta_0), then under certain conditions, it can also be shown that the maximum likelihood estimator converges in distribution to a normal distribution. Specifically,By Theorem 3.3 in : \sqrt\left(\widehat_\mathrm - \theta_0\right)\ \xrightarrow\ \mathcal\left(0,\, I^\right) where is the Fisher information matrix.


Functional equivariance

The maximum likelihood estimator selects the parameter value which gives the observed data the largest possible probability (or probability density, in the continuous case). If the parameter consists of a number of components, then we define their separate maximum likelihood estimators, as the corresponding component of the MLE of the complete parameter. Consistent with this, if \widehat is the MLE for \theta, and if g(\theta) is any transformation of \theta, then the MLE for \alpha=g(\theta) is by definition :\widehat = g(\,\widehat\,). \, It maximizes the so-called
profile likelihood The likelihood function (often simply called the likelihood) represents the probability of random variable realizations conditional on particular values of the statistical parameters. Thus, when evaluated on a given sample, the likelihood functi ...
: :\bar(\alpha) = \sup_ L(\theta). \, The MLE is also equivariant with respect to certain transformations of the data. If y=g(x) where g is one to one and does not depend on the parameters to be estimated, then the density functions satisfy :f_Y(y) = \frac and hence the likelihood functions for X and Y differ only by a factor that does not depend on the model parameters. For example, the MLE parameters of the log-normal distribution are the same as those of the normal distribution fitted to the logarithm of the data.


Efficiency

As assumed above, if the data were generated by ~f(\cdot\,;\theta_0)~, then under certain conditions, it can also be shown that the maximum likelihood estimator converges in distribution to a normal distribution. It is -consistent and asymptotically efficient, meaning that it reaches the
Cramér–Rao bound In estimation theory and statistics, the Cramér–Rao bound (CRB) expresses a lower bound on the variance of unbiased estimators of a deterministic (fixed, though unknown) parameter, the variance of any such estimator is at least as high as the ...
. Specifically, : \sqrt \, \left( \widehat_\text - \theta_0 \right)\ \ \xrightarrow\ \ \mathcal \left( 0,\ \mathcal^ \right) ~, where ~\mathcal~ is the Fisher information matrix: : \mathcal_ = \operatorname \, \biggl \; - \; \biggr~. In particular, it means that the
bias Bias is a disproportionate weight ''in favor of'' or ''against'' an idea or thing, usually in a way that is closed-minded, prejudicial, or unfair. Biases can be innate or learned. People may develop biases for or against an individual, a group ...
of the maximum likelihood estimator is equal to zero up to the order .


Second-order efficiency after correction for bias

However, when we consider the higher-order terms in the
expansion Expansion may refer to: Arts, entertainment and media * ''L'Expansion'', a French monthly business magazine * ''Expansion'' (album), by American jazz pianist Dave Burrell, released in 2004 * ''Expansions'' (McCoy Tyner album), 1970 * ''Expansio ...
of the distribution of this estimator, it turns out that has bias of order . This bias is equal to (componentwise) : b_h \; \equiv \; \operatorname \biggl \; \left( \widehat\theta_\mathrm - \theta_0 \right)_h \; \biggr \; = \; \frac \, \sum_^m \; \mathcal^ \; \mathcal^ \left( \frac \, K_ \; + \; J_ \right) where \mathcal^ (with superscripts) denotes the (''j,k'')-th component of the ''inverse'' Fisher information matrix \mathcal^, and : \frac \, K_ \; + \; J_ \; = \; \operatorname\,\biggl ; \frac12 \frac + \frac\,\frac \; \biggr~ . Using these formulae it is possible to estimate the second-order bias of the maximum likelihood estimator, and ''correct'' for that bias by subtracting it: : \widehat^*_\text = \widehat_\text - \widehat ~ . This estimator is unbiased up to the terms of order , and is called the bias-corrected maximum likelihood estimator. This bias-corrected estimator is (at least within the curved exponential family), meaning that it has minimal mean squared error among all second-order bias-corrected estimators, up to the terms of the order  . It is possible to continue this process, that is to derive the third-order bias-correction term, and so on. However, the maximum likelihood estimator is ''not'' third-order efficient.


Relation to Bayesian inference

A maximum likelihood estimator coincides with the most probable
Bayesian estimator In estimation theory and decision theory, a Bayes estimator or a Bayes action is an estimator or decision rule that minimizes the posterior expected value of a loss function (i.e., the posterior expected loss). Equivalently, it maximizes the po ...
given a
uniform A uniform is a variety of clothing worn by members of an organization while participating in that organization's activity. Modern uniforms are most often worn by armed forces and paramilitary organizations such as police, emergency services, ...
prior distribution In Bayesian statistical inference, a prior probability distribution, often simply called the prior, of an uncertain quantity is the probability distribution that would express one's beliefs about this quantity before some evidence is taken into ...
on the parameters. Indeed, the maximum a posteriori estimate is the parameter that maximizes the probability of given the data, given by Bayes' theorem: : \operatorname(\theta\mid x_1,x_2,\ldots,x_n) = \frac where \operatorname(\theta) is the prior distribution for the parameter and where \operatorname(x_1,x_2,\ldots,x_n) is the probability of the data averaged over all parameters. Since the denominator is independent of , the Bayesian estimator is obtained by maximizing f(x_1,x_2,\ldots,x_n\mid\theta)\operatorname(\theta) with respect to . If we further assume that the prior \operatorname(\theta) is a uniform distribution, the Bayesian estimator is obtained by maximizing the likelihood function f(x_1,x_2,\ldots,x_n\mid\theta). Thus the Bayesian estimator coincides with the maximum likelihood estimator for a uniform prior distribution \operatorname(\theta).


Application of maximum-likelihood estimation in Bayes decision theory

In many practical applications in
machine learning Machine learning (ML) is a field of inquiry devoted to understanding and building methods that 'learn', that is, methods that leverage data to improve performance on some set of tasks. It is seen as a part of artificial intelligence. Machine ...
, maximum-likelihood estimation is used as the model for parameter estimation. The Bayesian Decision theory is about designing a classifier that minimizes total expected risk, especially, when the costs (the loss function) associated with different decisions are equal, the classifier is minimizing the error over the whole distribution. Thus, the Bayes Decision Rule is stated as :"decide \;w_1\; if ~\operatorname(w_1, x) \; > \; \operatorname(w_2, x)~;~ otherwise decide \;w_2\;" where \;w_1\,, w_2\; are predictions of different classes. From a perspective of minimizing error, it can also be stated as :w = \underset \; \int_^\infty \operatorname(\text\mid x)\operatorname(x)\,\operatornamex~ where :\operatorname(\text\mid x) = \operatorname(w_1\mid x)~ if we decide \;w_2\; and \;\operatorname(\text\mid x) = \operatorname(w_2\mid x)\; if we decide \;w_1\;. By applying
Bayes' theorem In probability theory and statistics, Bayes' theorem (alternatively Bayes' law or Bayes' rule), named after Thomas Bayes, describes the probability of an event, based on prior knowledge of conditions that might be related to the event. For examp ...
:\operatorname(w_i \mid x) = \frac, and if we further assume the zero-or-one loss function, which is a same loss for all errors, the Bayes Decision rule can be reformulated as: :h_\text = \underset \, \bigl , \operatorname(x\mid w)\,\operatorname(w) \,\bigr;, where h_\text is the prediction and \;\operatorname(w)\; is the
prior probability In Bayesian statistical inference, a prior probability distribution, often simply called the prior, of an uncertain quantity is the probability distribution that would express one's beliefs about this quantity before some evidence is taken into ...
.


Relation to minimizing Kullback–Leibler divergence and cross entropy

Finding \hat \theta that maximizes the likelihood is asymptotically equivalent to finding the \hat \theta that defines a probability distribution (Q_) that has a minimal distance, in terms of
Kullback–Leibler divergence In mathematical statistics, the Kullback–Leibler divergence (also called relative entropy and I-divergence), denoted D_\text(P \parallel Q), is a type of statistical distance: a measure of how one probability distribution ''P'' is different fr ...
, to the real probability distribution from which our data were generated (i.e., generated by P_). In an ideal world, P and Q are the same (and the only thing unknown is \theta that defines P), but even if they are not and the model we use is misspecified, still the MLE will give us the "closest" distribution (within the restriction of a model Q that depends on \hat \theta) to the real distribution P_. Since cross entropy is just Shannon's entropy plus KL divergence, and since the entropy of P_ is constant, then the MLE is also asymptotically minimizing cross entropy.


Examples


Discrete uniform distribution

Consider a case where ''n'' tickets numbered from 1 to ''n'' are placed in a box and one is selected at random (''see
uniform distribution Uniform distribution may refer to: * Continuous uniform distribution * Discrete uniform distribution * Uniform distribution (ecology) * Equidistributed sequence See also * * Homogeneous distribution In mathematics, a homogeneous distribution ...
''); thus, the sample size is 1. If ''n'' is unknown, then the maximum likelihood estimator \widehat of ''n'' is the number ''m'' on the drawn ticket. (The likelihood is 0 for ''n'' < ''m'', for ''n'' ≥ ''m'', and this is greatest when ''n'' = ''m''. Note that the maximum likelihood estimate of ''n'' occurs at the lower extreme of possible values , rather than somewhere in the "middle" of the range of possible values, which would result in less bias.) The
expected value In probability theory, the expected value (also called expectation, expectancy, mathematical expectation, mean, average, or first moment) is a generalization of the weighted average. Informally, the expected value is the arithmetic mean of a ...
of the number ''m'' on the drawn ticket, and therefore the expected value of \widehat, is (''n'' + 1)/2. As a result, with a sample size of 1, the maximum likelihood estimator for ''n'' will systematically underestimate ''n'' by (''n'' − 1)/2.


Discrete distribution, finite parameter space

Suppose one wishes to determine just how biased an unfair coin is. Call the probability of tossing a ‘
head A head is the part of an organism which usually includes the ears, brain, forehead, cheeks, chin, eyes, nose, and mouth, each of which aid in various sensory functions such as sight, hearing, smell, and taste. Some very simple animals ...
’ ''p''. The goal then becomes to determine ''p''. Suppose the coin is tossed 80 times: i.e. the sample might be something like ''x''1 = H, ''x''2 = T, ..., ''x''80 = T, and the count of the number of
heads A head is the part of an organism which usually includes the ears, brain, forehead, cheeks, chin, eyes, nose, and mouth, each of which aid in various sensory functions such as sight, hearing, smell, and taste. Some very simple animals m ...
"H" is observed. The probability of tossing tails is 1 − ''p'' (so here ''p'' is ''θ'' above). Suppose the outcome is 49 heads and 31  tails, and suppose the coin was taken from a box containing three coins: one which gives heads with probability ''p'' = , one which gives heads with probability ''p'' =  and another which gives heads with probability ''p'' = . The coins have lost their labels, so which one it was is unknown. Using maximum likelihood estimation, the coin that has the largest likelihood can be found, given the data that were observed. By using the
probability mass function In probability and statistics, a probability mass function is a function that gives the probability that a discrete random variable is exactly equal to some value. Sometimes it is also known as the discrete density function. The probability mass ...
of the
binomial distribution In probability theory and statistics, the binomial distribution with parameters ''n'' and ''p'' is the discrete probability distribution of the number of successes in a sequence of ''n'' independent experiments, each asking a yes–no ques ...
with sample size equal to 80, number successes equal to 49 but for different values of ''p'' (the "probability of success"), the likelihood function (defined below) takes one of three values: : \begin \operatorname\bigl ;\mathrm = 49 \mid p=\tfrac\;\bigr& = \binom(\tfrac)^(1-\tfrac)^ \approx 0.000, \\ pt\operatorname\bigl ;\mathrm = 49 \mid p=\tfrac\;\bigr& = \binom(\tfrac)^(1-\tfrac)^ \approx 0.012, \\ pt\operatorname\bigl ;\mathrm = 49 \mid p=\tfrac\;\bigr& = \binom(\tfrac)^(1-\tfrac)^ \approx 0.054~. \end The likelihood is maximized when  = , and so this is the ''maximum likelihood estimate'' for .


Discrete distribution, continuous parameter space

Now suppose that there was only one coin but its could have been any value The likelihood function to be maximised is : L(p) = f_D(\mathrm = 49 \mid p) = \binom p^(1 - p)^~, and the maximisation is over all possible values One way to maximize this function is by differentiating with respect to and setting to zero: : \begin 0 & = \frac \left( \binom p^(1-p)^ \right)~, \\ pt0 & = 49 p^(1-p)^ - 31 p^(1-p)^ \\ pt & = p^(1-p)^\left 49 (1-p) - 31 p \right \\ pt & = p^(1-p)^\left 49 - 80 p \right. \end This is a product of three terms. The first term is 0 when  = 0. The second is 0 when  = 1. The third is zero when  = . The solution that maximizes the likelihood is clearly  =  (since  = 0 and  = 1 result in a likelihood of 0). Thus the ''maximum likelihood estimator'' for is . This result is easily generalized by substituting a letter such as in the place of 49 to represent the observed number of 'successes' of our
Bernoulli trial In the theory of probability and statistics, a Bernoulli trial (or binomial trial) is a random experiment with exactly two possible outcomes, "success" and "failure", in which the probability of success is the same every time the experiment is c ...
s, and a letter such as in the place of 80 to represent the number of Bernoulli trials. Exactly the same calculation yields which is the maximum likelihood estimator for any sequence of Bernoulli trials resulting in 'successes'.


Continuous distribution, continuous parameter space

For the
normal distribution In statistics, a normal distribution or Gaussian distribution is a type of continuous probability distribution for a real-valued random variable. The general form of its probability density function is : f(x) = \frac e^ The parameter \mu ...
\mathcal(\mu, \sigma^2) which has
probability density function In probability theory, a probability density function (PDF), or density of a continuous random variable, is a function whose value at any given sample (or point) in the sample space (the set of possible values taken by the random variable) ca ...
:f(x\mid \mu,\sigma^2) = \frac \exp\left(-\frac \right), the corresponding
probability density function In probability theory, a probability density function (PDF), or density of a continuous random variable, is a function whose value at any given sample (or point) in the sample space (the set of possible values taken by the random variable) ca ...
for a sample of
independent identically distributed In probability theory and statistics, a collection of random variables is independent and identically distributed if each random variable has the same probability distribution as the others and all are mutually independent. This property is us ...
normal random variables (the likelihood) is :f(x_1,\ldots,x_n \mid \mu,\sigma^2) = \prod_^n f( x_i\mid \mu, \sigma^2) = \left( \frac \right)^ \exp\left( -\frac\right). This family of distributions has two parameters: ; so we maximize the likelihood, \mathcal (\mu,\sigma^2) = f(x_1,\ldots,x_n \mid \mu, \sigma^2), over both parameters simultaneously, or if possible, individually. Since the
logarithm In mathematics, the logarithm is the inverse function to exponentiation. That means the logarithm of a number  to the base  is the exponent to which must be raised, to produce . For example, since , the ''logarithm base'' 10 ...
function itself is a
continuous Continuity or continuous may refer to: Mathematics * Continuity (mathematics), the opposing concept to discreteness; common examples include ** Continuous probability distribution or random variable in probability and statistics ** Continuous g ...
strictly increasing In mathematics, a monotonic function (or monotone function) is a function between ordered sets that preserves or reverses the given order. This concept first arose in calculus, and was later generalized to the more abstract setting of orde ...
function over the range of the likelihood, the values which maximize the likelihood will also maximize its logarithm (the log-likelihood itself is not necessarily strictly increasing). The log-likelihood can be written as follows: : \log\Bigl( \mathcal (\mu,\sigma^2)\Bigr) = -\frac \log(2\pi\sigma^2) - \frac \sum_^n (\,x_i-\mu\,)^2 (Note: the log-likelihood is closely related to information entropy and Fisher information.) We now compute the derivatives of this log-likelihood as follows. : \begin 0 & = \frac \log\Bigl( \mathcal (\mu,\sigma^2)\Bigr) = 0 - \frac. \end where \bar is the
sample mean The sample mean (or "empirical mean") and the sample covariance are statistics computed from a sample of data on one or more random variables. The sample mean is the average value (or mean value) of a sample of numbers taken from a larger popu ...
. This is solved by :\widehat\mu = \bar = \sum^n_ \frac. This is indeed the maximum of the function, since it is the only turning point in and the second derivative is strictly less than zero. Its
expected value In probability theory, the expected value (also called expectation, expectancy, mathematical expectation, mean, average, or first moment) is a generalization of the weighted average. Informally, the expected value is the arithmetic mean of a ...
is equal to the parameter of the given distribution, :\operatorname\bigl ;\widehat\mu\;\bigr= \mu, \, which means that the maximum likelihood estimator \widehat\mu is unbiased. Similarly we differentiate the log-likelihood with respect to and equate to zero: : \begin 0 & = \frac \log\Bigl( \mathcal (\mu,\sigma^2)\Bigr) = -\frac + \frac \sum_^ (\,x_i-\mu\,)^2. \end which is solved by :\widehat\sigma^2 = \frac \sum_^n(x_i-\mu)^2. Inserting the estimate \mu = \widehat\mu we obtain :\widehat\sigma^2 = \frac \sum_^n (x_i - \bar)^2 = \frac\sum_^n x_i^2 -\frac\sum_^n\sum_^n x_i x_j. To calculate its expected value, it is convenient to rewrite the expression in terms of zero-mean random variables ( statistical error) \delta_i \equiv \mu - x_i. Expressing the estimate in these variables yields : \widehat\sigma^2 = \frac \sum_^n (\mu - \delta_i)^2 -\frac\sum_^n\sum_^n (\mu - \delta_i)(\mu - \delta_j). Simplifying the expression above, utilizing the facts that \operatorname\bigl ;\delta_i\;\bigr= 0 and \operatorname\bigl ;\delta_i^2\;\bigr= \sigma^2 , allows us to obtain :\operatorname\bigl ;\widehat\sigma^2\;\bigr \frac\sigma^2. This means that the estimator \widehat\sigma^2 is biased for \sigma^2. It can also be shown that \widehat\sigma is biased for \sigma, but that both \widehat\sigma^2 and \widehat\sigma are consistent. Formally we say that the ''maximum likelihood estimator'' for \theta=(\mu,\sigma^2) is :\widehat = \left(\widehat,\widehat^2\right). In this case the MLEs could be obtained individually. In general this may not be the case, and the MLEs would have to be obtained simultaneously. The normal log-likelihood at its maximum takes a particularly simple form: : \log\Bigl( \mathcal(\widehat\mu,\widehat\sigma)\Bigr) = \frac \bigl(\,\log(2\pi\widehat\sigma^2) +1\,\bigr) This maximum log-likelihood can be shown to be the same for more general
least squares The method of least squares is a standard approach in regression analysis to approximate the solution of overdetermined systems (sets of equations in which there are more equations than unknowns) by minimizing the sum of the squares of the re ...
, even for non-linear least squares. This is often used in determining likelihood-based approximate
confidence interval In frequentist statistics, a confidence interval (CI) is a range of estimates for an unknown parameter. A confidence interval is computed at a designated ''confidence level''; the 95% confidence level is most common, but other levels, such as 9 ...
s and
confidence region In statistics, a confidence region is a multi-dimensional generalization of a confidence interval. It is a set of points in an ''n''-dimensional space, often represented as an ellipsoid around a point which is an estimated solution to a problem, a ...
s, which are generally more accurate than those using the asymptotic normality discussed above.


Non-independent variables

It may be the case that variables are correlated, that is, not independent. Two random variables y_1 and y_2 are independent only if their joint probability density function is the product of the individual probability density functions, i.e. :f(y_1,y_2)=f(y_1)f(y_2)\, Suppose one constructs an order-''n'' Gaussian vector out of random variables (y_1,\ldots,y_n), where each variable has means given by (\mu_1, \ldots, \mu_n). Furthermore, let the
covariance matrix In probability theory and statistics, a covariance matrix (also known as auto-covariance matrix, dispersion matrix, variance matrix, or variance–covariance matrix) is a square matrix giving the covariance between each pair of elements of ...
be denoted by \mathit\Sigma. The joint probability density function of these ''n'' random variables then follows a
multivariate normal distribution In probability theory and statistics, the multivariate normal distribution, multivariate Gaussian distribution, or joint normal distribution is a generalization of the one-dimensional ( univariate) normal distribution to higher dimensions. One ...
given by: :f(y_1,\ldots,y_n)=\frac \exp\left( -\frac \left _1-\mu_1,\ldots,y_n-\mu_n\rightmathit\Sigma^ \left _1-\mu_1,\ldots,y_n-\mu_n\right\mathrm \right) In the bivariate case, the joint probability density function is given by: : f(y_1,y_2) = \frac \exp\left -\frac \left(\frac - \frac + \frac\right) \right In this and other cases where a joint density function exists, the likelihood function is defined as above, in the section " principles," using this density.


Example

X_1,\ X_2,\ldots,\ X_m are counts in cells / boxes 1 up to m; each box has a different probability (think of the boxes being bigger or smaller) and we fix the number of balls that fall to be n:x_1+x_2+\cdots+x_m=n. The probability of each box is p_i, with a constraint: p_1+p_2+\cdots+p_m=1. This is a case in which the X_i ''s'' are not independent, the joint probability of a vector x_1,\ x_2,\ldots,x_m is called the multinomial and has the form: : f(x_1,x_2,\ldots,x_m\mid p_1,p_2,\ldots,p_m)=\frac\prod p_i^= \binom p_1^ p_2^ \cdots p_m^ Each box taken separately against all the other boxes is a binomial and this is an extension thereof. The log-likelihood of this is: : \ell(p_1,p_2,\ldots,p_m)=\log n!-\sum_^m \log x_i!+\sum_^m x_i\log p_i The constraint has to be taken into account and use the Lagrange multipliers: : L(p_1,p_2,\ldots,p_m,\lambda)=\ell(p_1,p_2,\ldots,p_m)+\lambda\left(1-\sum_^m p_i\right) By posing all the derivatives to be 0, the most natural estimate is derived : \hat_i=\frac Maximizing log likelihood, with and without constraints, can be an unsolvable problem in closed form, then we have to use iterative procedures.


Iterative procedures

Except for special cases, the likelihood equations :\frac = 0 cannot be solved explicitly for an estimator \widehat = \widehat(\mathbf). Instead, they need to be solved iteratively: starting from an initial guess of \theta (say \widehat_), one seeks to obtain a convergent sequence \left\. Many methods for this kind of
optimization problem In mathematics, computer science and economics, an optimization problem is the problem of finding the ''best'' solution from all feasible solutions. Optimization problems can be divided into two categories, depending on whether the variables ...
are available, but the most commonly used ones are algorithms based on an updating formula of the form :\widehat_ = \widehat_ + \eta_ \mathbf_r\left(\widehat\right) where the vector \mathbf_\left(\widehat\right) indicates the
descent direction In optimization, a descent direction is a vector \mathbf\in\mathbb R^n that, in the sense below, moves us closer towards a local minimum \mathbf^* of our objective function f:\mathbb R^n\to\mathbb R. Suppose we are computing \mathbf^* by an iterat ...
of the rth "step," and the scalar \eta_ captures the "step length," also known as the
learning rate In machine learning and statistics, the learning rate is a tuning parameter in an optimization algorithm that determines the step size at each iteration while moving toward a minimum of a loss function. Since it influences to what extent newly ...
.


Gradient descent method

(Note: here it is a maximization problem, so the sign before gradient is flipped) :\eta_r\in \R^+ that is small enough for convergence and \mathbf_r\left(\widehat\right) = \nabla\ell\left(\widehat_r;\mathbf\right) Gradient descent method requires to calculate the gradient at the rth iteration, but no need to calculate the inverse of second-order derivative, i.e., the Hessian matrix. Therefore, it is computationally faster than Newton-Raphson method.


Newton–Raphson method

:\eta_r = 1 and \mathbf_r\left(\widehat\right) = -\mathbf^_r\left(\widehat\right) \mathbf_r\left(\widehat\right) where \mathbf_(\widehat) is the
score Score or scorer may refer to: *Test score, the result of an exam or test Business * Score Digital, now part of Bauer Radio * Score Entertainment, a former American trading card design and manufacturing company * Score Media, a former Canadian ...
and \mathbf^_r \left(\widehat\right) is the
inverse Inverse or invert may refer to: Science and mathematics * Inverse (logic), a type of conditional sentence which is an immediate inference made from another conditional sentence * Additive inverse (negation), the inverse of a number that, when a ...
of the
Hessian matrix In mathematics, the Hessian matrix or Hessian is a square matrix of second-order partial derivatives of a scalar-valued function, or scalar field. It describes the local curvature of a function of many variables. The Hessian matrix was developed ...
of the log-likelihood function, both evaluated the rth iteration. But because the calculation of the Hessian matrix is computationally costly, numerous alternatives have been proposed. The popular
Berndt–Hall–Hall–Hausman algorithm The Berndt–Hall–Hall–Hausman (BHHH) algorithm is a numerical optimization algorithm similar to the Newton–Raphson algorithm, but it replaces the observed negative Hessian matrix with the outer product of the gradient. This approximation i ...
approximates the Hessian with the
outer product In linear algebra, the outer product of two coordinate vectors is a matrix. If the two vectors have dimensions ''n'' and ''m'', then their outer product is an ''n'' × ''m'' matrix. More generally, given two tensors (multidimensional arrays of nu ...
of the expected gradient, such that :\mathbf_r\left(\widehat\right) = - \left \frac \sum_^n \frac \left( \frac \right)^ \right \mathbf_r \left(\widehat\right)


Quasi-Newton method Quasi-Newton methods are methods used to either find zeroes or local maxima and minima of functions, as an alternative to Newton's method. They can be used if the Jacobian or Hessian is unavailable or is too expensive to compute at every iteration. ...
s

Other quasi-Newton methods use more elaborate secant updates to give approximation of Hessian matrix.


Davidon–Fletcher–Powell formula The Davidon–Fletcher–Powell formula (or DFP; named after William C. Davidon, Roger Fletcher, and Michael J. D. Powell) finds the solution to the secant equation that is closest to the current estimate and satisfies the curvature condition. It ...

DFP formula finds a solution that is symmetric, positive-definite and closest to the current approximate value of second-order derivative: : \mathbf_ = \left(I - \gamma_k y_k s_k^\mathsf\right) \mathbf_k \left(I - \gamma_k s_k y_k^\mathsf\right) + \gamma_k y_k y_k^\mathsf, where : y_k = \nabla\ell(x_k + s_k) - \nabla\ell(x_k), : \gamma_k = \frac, : s_k = x_ - x_k.


Broyden–Fletcher–Goldfarb–Shanno algorithm In numerical optimization, the Broyden–Fletcher–Goldfarb–Shanno (BFGS) algorithm is an iterative method for solving unconstrained nonlinear optimization problems. Like the related Davidon–Fletcher–Powell method, BFGS determines the ...

BFGS also gives a solution that is symmetric and positive-definite: : B_ = B_k + \frac - \frac\ , where : y_k = \nabla\ell(x_k + s_k) - \nabla\ell(x_k), : s_k = x_ - x_k. BFGS method is not guaranteed to converge unless the function has a quadratic Taylor expansion near an optimum. However, BFGS can have acceptable performance even for non-smooth optimization instances


Fisher's scoring

Another popular method is to replace the Hessian with the Fisher information matrix, \mathcal(\theta) = \operatorname\left mathbf_r \left(\widehat\right)\right/math>, giving us the Fisher scoring algorithm. This procedure is standard in the estimation of many methods, such as
generalized linear models In statistics, a generalized linear model (GLM) is a flexible generalization of ordinary linear regression. The GLM generalizes linear regression by allowing the linear model to be related to the response variable via a ''link function'' and by ...
. Although popular, quasi-Newton methods may converge to a stationary point that is not necessarily a local or global maximum, but rather a local minimum or a
saddle point In mathematics, a saddle point or minimax point is a point on the surface of the graph of a function where the slopes (derivatives) in orthogonal directions are all zero (a critical point), but which is not a local extremum of the functi ...
. Therefore, it is important to assess the validity of the obtained solution to the likelihood equations, by verifying that the Hessian, evaluated at the solution, is both negative definite and
well-conditioned In numerical analysis, the condition number of a function measures how much the output value of the function can change for a small change in the input argument. This is used to measure how sensitive a function is to changes or errors in the input ...
.


History

Early users of maximum likelihood were
Carl Friedrich Gauss Johann Carl Friedrich Gauss (; german: Gauß ; la, Carolus Fridericus Gauss; 30 April 177723 February 1855) was a German mathematician and physicist who made significant contributions to many fields in mathematics and science. Sometimes refer ...
,
Pierre-Simon Laplace Pierre-Simon, marquis de Laplace (; ; 23 March 1749 – 5 March 1827) was a French scholar and polymath whose work was important to the development of engineering, mathematics, statistics, physics, astronomy, and philosophy. He summarize ...
, Thorvald N. Thiele, and
Francis Ysidro Edgeworth Francis Ysidro Edgeworth (8 February 1845 – 13 February 1926) was an Anglo-Irish philosopher and political economist who made significant contributions to the methods of statistics during the 1880s. From 1891 onward, he was appointed th ...
. However, its widespread use rose between 1912 and 1922 when Ronald Fisher recommended, widely popularized, and carefully analyzed maximum-likelihood estimation (with fruitless attempts at
proofs Proof most often refers to: * Proof (truth), argument or sufficient evidence for the truth of a proposition * Alcohol proof, a measure of an alcoholic drink's strength Proof may also refer to: Mathematics and formal logic * Formal proof, a co ...
). Maximum-likelihood estimation finally transcended heuristic justification in a proof published by Samuel S. Wilks in 1938, now called
Wilks' theorem In statistics Wilks' theorem offers an asymptotic distribution of the log-likelihood ratio statistic, which can be used to produce confidence intervals for maximum-likelihood estimates or as a test statistic for performing the likelihood-ratio ...
. The theorem shows that the error in the logarithm of likelihood values for estimates from multiple independent observations is asymptotically ''χ'' 2-distributed, which enables convenient determination of a
confidence region In statistics, a confidence region is a multi-dimensional generalization of a confidence interval. It is a set of points in an ''n''-dimensional space, often represented as an ellipsoid around a point which is an estimated solution to a problem, a ...
around any estimate of the parameters. The only difficult part of Wilks’ proof depends on the expected value of the Fisher information matrix, which is provided by a theorem proven by
Fisher Fisher is an archaic term for a fisherman, revived as gender-neutral. Fisher, Fishers or The Fisher may also refer to: Places Australia *Division of Fisher, an electoral district in the Australian House of Representatives, in Queensland *Elect ...
. Wilks continued to improve on the generality of the theorem throughout his life, with his most general proof published in 1962. Reviews of the development of maximum likelihood estimation have been provided by a number of authors.


See also


Related concepts

* Akaike information criterion: a criterion to compare statistical models, based on MLE *
Extremum estimator In statistics and econometrics, extremum estimators are a wide class of estimators for parametric models that are calculated through maximization (or minimization) of a certain objective function, which depends on the data. The general theory of e ...
: a more general class of estimators to which MLE belongs * Fisher information: information matrix, its relationship to covariance matrix of ML estimates *
Mean squared error In statistics, the mean squared error (MSE) or mean squared deviation (MSD) of an estimator (of a procedure for estimating an unobserved quantity) measures the average of the squares of the errors—that is, the average squared difference between ...
: a measure of how 'good' an estimator of a distributional parameter is (be it the maximum likelihood estimator or some other estimator) * RANSAC: a method to estimate parameters of a mathematical model given data that contains outliers *
Rao–Blackwell theorem In statistics, the Rao–Blackwell theorem, sometimes referred to as the Rao–Blackwell–Kolmogorov theorem, is a result which characterizes the transformation of an arbitrarily crude estimator into an estimator that is optimal by the mean-squ ...
: yields a process for finding the best possible unbiased estimator (in the sense of having minimal
mean squared error In statistics, the mean squared error (MSE) or mean squared deviation (MSD) of an estimator (of a procedure for estimating an unobserved quantity) measures the average of the squares of the errors—that is, the average squared difference between ...
); the MLE is often a good starting place for the process * Wilks’ theorem: provides a means of estimating the size and shape of the region of roughly equally-probable estimates for the population's parameter values, using the information from a single sample, using a
chi-squared distribution In probability theory and statistics, the chi-squared distribution (also chi-square or \chi^2-distribution) with k degrees of freedom is the distribution of a sum of the squares of k independent standard normal random variables. The chi-squar ...


Other estimation methods

* Generalized method of moments: methods related to the likelihood equation in maximum likelihood estimation * M-estimator: an approach used in robust statistics * Maximum a posteriori (MAP) estimator: for a contrast in the way to calculate estimators when prior knowledge is postulated *
Maximum spacing estimation In statistics, maximum spacing estimation (MSE or MSP), or maximum product of spacing estimation (MPS), is a method for estimating the parameters of a univariate statistical model. The method requires maximization of the geometric mean of ''spac ...
: a related method that is more robust in many situations * Maximum entropy estimation *
Method of moments (statistics) In statistics, the method of moments is a method of estimation of population parameters. The same principle is used to derive higher moments like skewness and kurtosis. It starts by expressing the population moments (i.e., the expected value ...
: another popular method for finding parameters of distributions * Method of support, a variation of the maximum likelihood technique * Minimum-distance estimation *
Partial likelihood methods for panel data Partial (pooled) likelihood estimation for panel data is a quasi-maximum likelihood method for panel analysis that assumes that density of ''yit'' given ''xit'' is correctly specified for each time period but it allows for misspecification in th ...
*
Quasi-maximum likelihood In statistics a quasi-maximum likelihood estimate (QMLE), also known as a pseudo-likelihood estimate or a composite likelihood estimate, is an estimate of a parameter ''θ'' in a statistical model that is formed by maximizing a function that is rel ...
estimator: an MLE estimator that is misspecified, but still consistent * Restricted maximum likelihood: a variation using a likelihood function calculated from a transformed set of data


References


Further reading

* * * * * * * * *


External links

* * * * * {{DEFAULTSORT:Maximum likelihood M-estimators Probability distribution fitting