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Estimation theory is a branch of
statistics Statistics (from German language, German: ', "description of a State (polity), state, a country") is the discipline that concerns the collection, organization, analysis, interpretation, and presentation of data. In applying statistics to a s ...
that deals with estimating the values of parameters based on measured empirical data that has a random component. The parameters describe an underlying physical setting in such a way that their value affects the distribution of the measured data. An '' estimator'' attempts to approximate the unknown parameters using the measurements. In estimation theory, two approaches are generally considered: * The probabilistic approach (described in this article) assumes that the measured data is random with
probability distribution In probability theory and statistics, a probability distribution is a Function (mathematics), function that gives the probabilities of occurrence of possible events for an Experiment (probability theory), experiment. It is a mathematical descri ...
dependent on the parameters of interest * The set-membership approach assumes that the measured data vector belongs to a set which depends on the parameter vector.


Examples

For example, it is desired to estimate the proportion of a population of voters who will vote for a particular candidate. That proportion is the parameter sought; the estimate is based on a small random sample of voters. Alternatively, it is desired to estimate the probability of a voter voting for a particular candidate, based on some demographic features, such as age. Or, for example, in
radar Radar is a system that uses radio waves to determine the distance ('' ranging''), direction ( azimuth and elevation angles), and radial velocity of objects relative to the site. It is a radiodetermination method used to detect and track ...
the aim is to find the range of objects (airplanes, boats, etc.) by analyzing the two-way transit timing of received echoes of transmitted pulses. Since the reflected pulses are unavoidably embedded in electrical noise, their measured values are randomly distributed, so that the transit time must be estimated. As another example, in electrical communication theory, the measurements which contain information regarding the parameters of interest are often associated with a noisy
signal A signal is both the process and the result of transmission of data over some media accomplished by embedding some variation. Signals are important in multiple subject fields including signal processing, information theory and biology. In ...
.


Basics

For a given model, several statistical "ingredients" are needed so the estimator can be implemented. The first is a statistical sample – a set of data points taken from a random vector (RV) of size ''N''. Put into a vector, \mathbf = \begin x \\ x \\ \vdots \\ x -1\end. Secondly, there are ''M'' parameters \boldsymbol = \begin \theta_1 \\ \theta_2 \\ \vdots \\ \theta_M \end, whose values are to be estimated. Third, the continuous probability density function (pdf) or its discrete counterpart, the
probability mass function In probability and statistics, a probability mass function (sometimes called ''probability function'' or ''frequency function'') is a function that gives the probability that a discrete random variable is exactly equal to some value. Sometimes i ...
(pmf), of the underlying distribution that generated the data must be stated conditional on the values of the parameters: p(\mathbf , \boldsymbol).\, It is also possible for the parameters themselves to have a probability distribution (e.g.,
Bayesian statistics Bayesian statistics ( or ) is a theory in the field of statistics based on the Bayesian interpretation of probability, where probability expresses a ''degree of belief'' in an event. The degree of belief may be based on prior knowledge about ...
). It is then necessary to define the
Bayesian probability Bayesian probability ( or ) is an interpretation of the concept of probability, in which, instead of frequency or propensity of some phenomenon, probability is interpreted as reasonable expectation representing a state of knowledge or as quant ...
\pi( \boldsymbol).\, After the model is formed, the goal is to estimate the parameters, with the estimates commonly denoted \hat, where the "hat" indicates the estimate. One common estimator is the minimum mean squared error (MMSE) estimator, which utilizes the error between the estimated parameters and the actual value of the parameters \mathbf = \hat - \boldsymbol as the basis for optimality. This error term is then squared and the
expected value In probability theory, the expected value (also called expectation, expectancy, expectation operator, mathematical expectation, mean, expectation value, or first Moment (mathematics), moment) is a generalization of the weighted average. Informa ...
of this squared value is minimized for the MMSE estimator.


Estimators

Commonly used estimators (estimation methods) and topics related to them include: * Maximum likelihood estimators * Bayes estimators * Method of moments estimators * Cramér–Rao bound * Least squares * Minimum mean squared error (MMSE), also known as Bayes least squared error (BLSE) * Maximum a posteriori (MAP) * Minimum variance unbiased estimator (MVUE) * Nonlinear system identification * Best linear unbiased estimator (BLUE) *Unbiased estimators — see estimator bias. * Particle filter * Markov chain Monte Carlo (MCMC) *
Kalman filter In statistics and control theory, Kalman filtering (also known as linear quadratic estimation) is an algorithm that uses a series of measurements observed over time, including statistical noise and other inaccuracies, to produce estimates of unk ...
, and its various derivatives * Wiener filter


Examples


Unknown constant in additive white Gaussian noise

Consider a received
discrete signal In mathematical dynamics, discrete time and continuous time are two alternative frameworks within which variables that evolve over time are modeled. Discrete time Discrete time views values of variables as occurring at distinct, separate "poi ...
, x /math>, of N independent samples that consists of an unknown constant A with additive white Gaussian noise (AWGN) w /math> with zero mean and known
variance In probability theory and statistics, variance is the expected value of the squared deviation from the mean of a random variable. The standard deviation (SD) is obtained as the square root of the variance. Variance is a measure of dispersion ...
\sigma^2 (''i.e.'', \mathcal(0, \sigma^2)). Since the variance is known then the only unknown parameter is A. The model for the signal is then x = A + w \quad n=0, 1, \dots, N-1 Two possible (of many) estimators for the parameter A are: * \hat_1 = x /math> * \hat_2 = \frac \sum_^ x /math> which is the sample mean Both of these estimators have a mean of A, which can be shown through taking the
expected value In probability theory, the expected value (also called expectation, expectancy, expectation operator, mathematical expectation, mean, expectation value, or first Moment (mathematics), moment) is a generalization of the weighted average. Informa ...
of each estimator \mathrm\left hat_1\right= \mathrm\left \right">x \right= A and \mathrm\left \hat_2 \right= \mathrm\left \right">\frac \sum_^ x \right= \frac \left[ \sum_^ \mathrm\left \right">x \right\right] = \frac \left[ N A \right] = A At this point, these two estimators would appear to perform the same. However, the difference between them becomes apparent when comparing the variances. \mathrm \left( \hat_1 \right) = \mathrm \left( x \right) = \sigma^2 and \mathrm \left( \hat_2 \right) = \mathrm \left( \frac \sum_^ x \right) \overset \frac \left \sum_^ \mathrm (x[n \right">.html" ;"title="\sum_^ \mathrm (x[n">\sum_^ \mathrm (x[n \right= \frac \left[ N \sigma^2 \right] = \frac It would seem that the sample mean is a better estimator since its variance is lower for every ''N'' > 1.


Maximum likelihood

Continuing the example using the maximum likelihood estimator, the probability density function (pdf) of the noise for one sample w /math> is p(w = \frac \exp\left(- \frac w 2 \right) and the probability of x /math> becomes (x /math> can be thought of a \mathcal(A, \sigma^2)) p(x A) = \frac \exp\left(- \frac (x - A)^2 \right) By
independence Independence is a condition of a nation, country, or state, in which residents and population, or some portion thereof, exercise self-government, and usually sovereignty, over its territory. The opposite of independence is the status of ...
, the probability of \mathbf becomes p(\mathbf; A) = \prod_^ p(x A) = \frac \exp\left(- \frac \sum_^(x - A)^2 \right) Taking the
natural logarithm The natural logarithm of a number is its logarithm to the base of a logarithm, base of the e (mathematical constant), mathematical constant , which is an Irrational number, irrational and Transcendental number, transcendental number approxima ...
of the pdf \ln p(\mathbf; A) = -N \ln \left(\sigma \sqrt\right) - \frac \sum_^(x - A)^2 and the maximum likelihood estimator is \hat = \arg \max \ln p(\mathbf; A) Taking the first
derivative In mathematics, the derivative is a fundamental tool that quantifies the sensitivity to change of a function's output with respect to its input. The derivative of a function of a single variable at a chosen input value, when it exists, is t ...
of the log-likelihood function \frac \ln p(\mathbf; A) = \frac \left - A) \right">\sum_^(x - A) \right= \frac \left - N A \right">\sum_^x - N A \right and setting it to zero 0 = \frac \left - N A \right">\sum_^x - N A \right= \sum_^x - N A This results in the maximum likelihood estimator \hat = \frac \sum_^x /math> which is simply the sample mean. From this example, it was found that the sample mean is the maximum likelihood estimator for N samples of a fixed, unknown parameter corrupted by AWGN.


Cramér–Rao lower bound

To find the Cramér–Rao lower bound (CRLB) of the sample mean estimator, it is first necessary to find the Fisher information number \mathcal(A) = \mathrm \left( \left \frac \ln p(\mathbf; A) \right2 \right) = -\mathrm \left \frac \ln p(\mathbf; A) \right and copying from above \frac \ln p(\mathbf; A) = \frac \left - N A \right">\sum_^x - N A \right Taking the second derivative \frac \ln p(\mathbf; A) = \frac (- N) = \frac and finding the negative expected value is trivial since it is now a deterministic constant -\mathrm \left \frac \ln p(\mathbf; A) \right= \frac Finally, putting the Fisher information into \mathrm\left( \hat \right) \geq \frac results in \mathrm\left( \hat \right) \geq \frac Comparing this to the variance of the sample mean (determined previously) shows that the sample mean is ''equal to'' the Cramér–Rao lower bound for all values of N and A. In other words, the sample mean is the (necessarily unique) efficient estimator, and thus also the minimum variance unbiased estimator (MVUE), in addition to being the maximum likelihood estimator.


Maximum of a uniform distribution

One of the simplest non-trivial examples of estimation is the estimation of the maximum of a uniform distribution. It is used as a hands-on classroom exercise and to illustrate basic principles of estimation theory. Further, in the case of estimation based on a single sample, it demonstrates philosophical issues and possible misunderstandings in the use of maximum likelihood estimators and likelihood functions. Given a discrete uniform distribution 1,2,\dots,N with unknown maximum, the UMVU estimator for the maximum is given by \frac m - 1 = m + \frac - 1 where ''m'' is the sample maximum and ''k'' is the sample size, sampling without replacement. This problem is commonly known as the German tank problem, due to application of maximum estimation to estimates of German tank production during
World War II World War II or the Second World War (1 September 1939 – 2 September 1945) was a World war, global conflict between two coalitions: the Allies of World War II, Allies and the Axis powers. World War II by country, Nearly all of the wo ...
. The formula may be understood intuitively as; the gap being added to compensate for the negative bias of the sample maximum as an estimator for the population maximum. This has a variance of \frac\frac \approx \frac \text k \ll N so a standard deviation of approximately N/k, the (population) average size of a gap between samples; compare \frac above. This can be seen as a very simple case of maximum spacing estimation. The sample maximum is the maximum likelihood estimator for the population maximum, but, as discussed above, it is biased.


Applications

Numerous fields require the use of estimation theory. Some of these fields include: * Interpretation of scientific experiments *
Signal processing Signal processing is an electrical engineering subfield that focuses on analyzing, modifying and synthesizing ''signals'', such as audio signal processing, sound, image processing, images, Scalar potential, potential fields, Seismic tomograph ...
*
Clinical trial Clinical trials are prospective biomedical or behavioral research studies on human subject research, human participants designed to answer specific questions about biomedical or behavioral interventions, including new treatments (such as novel v ...
s *
Opinion poll An opinion poll, often simply referred to as a survey or a poll, is a human research survey of public opinion from a particular sample. Opinion polls are usually designed to represent the opinions of a population by conducting a series of qu ...
s *
Quality control Quality control (QC) is a process by which entities review the quality of all factors involved in production. ISO 9000 defines quality control as "a part of quality management focused on fulfilling quality requirements". This approach plac ...
*
Telecommunication Telecommunication, often used in its plural form or abbreviated as telecom, is the transmission of information over a distance using electronic means, typically through cables, radio waves, or other communication technologies. These means of ...
s *
Project management Project management is the process of supervising the work of a Project team, team to achieve all project goals within the given constraints. This information is usually described in project initiation documentation, project documentation, crea ...
*
Software engineering Software engineering is a branch of both computer science and engineering focused on designing, developing, testing, and maintaining Application software, software applications. It involves applying engineering design process, engineering principl ...
*
Control theory Control theory is a field of control engineering and applied mathematics that deals with the control system, control of dynamical systems in engineered processes and machines. The objective is to develop a model or algorithm governing the applic ...
(in particular Adaptive control) * Network intrusion detection system * Orbit determination Measured data are likely to be subject to
noise Noise is sound, chiefly unwanted, unintentional, or harmful sound considered unpleasant, loud, or disruptive to mental or hearing faculties. From a physics standpoint, there is no distinction between noise and desired sound, as both are vibrat ...
or uncertainty and it is through statistical
probability Probability is a branch of mathematics and statistics concerning events and numerical descriptions of how likely they are to occur. The probability of an event is a number between 0 and 1; the larger the probability, the more likely an e ...
that optimal solutions are sought to extract as much
information Information is an Abstraction, abstract concept that refers to something which has the power Communication, to inform. At the most fundamental level, it pertains to the Interpretation (philosophy), interpretation (perhaps Interpretation (log ...
from the data as possible.


See also

* Best linear unbiased estimator (BLUE) * Completeness (statistics) * Detection theory * Efficiency (statistics) * Expectation-maximization algorithm (EM algorithm) * Fermi problem * Grey box model *
Information theory Information theory is the mathematical study of the quantification (science), quantification, Data storage, storage, and telecommunications, communication of information. The field was established and formalized by Claude Shannon in the 1940s, ...
* Least-squares spectral analysis * Matched filter * Maximum entropy spectral estimation * Nuisance parameter * Parametric equation * Pareto principle * Rule of three (statistics) * State estimator * Statistical signal processing * Sufficiency (statistics)


Notes


References


Citations


Sources

* * * * * * * * *


External links

* {{Authority control Signal processing Mathematical and quantitative methods (economics)