In
probability theory
Probability theory or probability calculus is the branch of mathematics concerned with probability. Although there are several different probability interpretations, probability theory treats the concept in a rigorous mathematical manner by expre ...
, the de Moivre–Laplace theorem, which is a special case of the
central limit theorem
In probability theory, the central limit theorem (CLT) states that, under appropriate conditions, the Probability distribution, distribution of a normalized version of the sample mean converges to a Normal distribution#Standard normal distributi ...
, states that the
normal distribution
In probability theory and 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 ...
may be used as an approximation to the
binomial distribution
In probability theory and statistics, the binomial distribution with parameters and is the discrete probability distribution of the number of successes in a sequence of statistical independence, independent experiment (probability theory) ...
under certain conditions. In particular, the theorem shows that 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 ...
of the random number of "successes" observed in a series of
independent
Independent or Independents may refer to:
Arts, entertainment, and media Artist groups
* Independents (artist group), a group of modernist painters based in Pennsylvania, United States
* Independentes (English: Independents), a Portuguese artist ...
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 ...
s, each having probability
of success (a binomial distribution with
trials),
converges to the
probability density function
In probability theory, a probability density function (PDF), density function, or density of an absolutely continuous random variable, is a Function (mathematics), function whose value at any given sample (or point) in the sample space (the s ...
of the normal distribution with expectation
and standard deviation
, as
grows large, assuming
is not
or
.
The theorem appeared in the second edition of ''
The Doctrine of Chances'' by
Abraham de Moivre
Abraham de Moivre FRS (; 26 May 166727 November 1754) was a French mathematician known for de Moivre's formula, a formula that links complex numbers and trigonometry, and for his work on the normal distribution and probability theory.
He move ...
, published in 1738. Although de Moivre did not use the term "Bernoulli trials", he wrote about the
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 ...
of the number of times "heads" appears when a coin is tossed 3600 times.
This is one derivation of the particular
Gaussian function
In mathematics, a Gaussian function, often simply referred to as a Gaussian, is a function (mathematics), function of the base form
f(x) = \exp (-x^2)
and with parametric extension
f(x) = a \exp\left( -\frac \right)
for arbitrary real number, rea ...
used in the normal distribution.
It is a special case of the central limit theorem because a Bernoulli process can be thought of as the drawing of independent random variables from a bimodal discrete distribution with non-zero probability only for values 0 and 1. In this case, the binomial distribution models the number of successes (i.e., the number of 1s), whereas the central limit theorem states that, given sufficiently large ''n'', the distribution of the sample means will be approximately normal. However, because in this case the fraction of successes (i.e., the number of 1s divided by the number of trials, ''n'') is ''equal to the sample mean'', the distribution of the fractions of successes (described by the binomial distribution divided by the constant ''n'') and the distribution of the sample means (approximately normal with large ''n'' due to the central limit theorem) are equivalent.
Theorem
As ''n'' grows large, for ''k'' in the
neighborhood
A neighbourhood (Commonwealth English) or neighborhood (American English) is a geographically localized community within a larger town, city, suburb or rural area, sometimes consisting of a single street and the buildings lining it. Neigh ...
of ''np'' we can approximate
:
in the sense that the ratio of the left-hand side to the right-hand side converges to 1 as ''n'' → ∞.
Proof
The theorem can be more rigorously stated as follows:
, with
a binomially distributed random variable, approaches the standard normal as
, with the ratio of the probability mass of
to the limiting normal density being 1. This can be shown for an arbitrary nonzero and finite point
. On the unscaled curve for
, this would be a point
given by
:
For example, with
at 3,
stays 3 standard deviations from the mean in the unscaled curve.
The normal distribution with mean
and standard deviation
is defined by the differential equation (DE)
:
with an initial condition set by the probability axiom
.
The binomial distribution limit approaches the normal if the binomial satisfies this DE. As the binomial is discrete the equation starts as a
difference equation
In mathematics, a recurrence relation is an equation according to which the nth term of a sequence of numbers is equal to some combination of the previous terms. Often, only k previous terms of the sequence appear in the equation, for a parameter ...
whose limit morphs to a DE. Difference equations use th
discrete derivative , the change for step size 1. As
, the discrete derivative becomes the
continuous derivative. Hence the proof need show only that, for the unscaled binomial distribution,
:
as
,
where
,
, and
.
The required result can be shown directly:
:
The last holds because the term
dominates both the denominator and the numerator as
.
As
takes just integral values, the constant
is subject to a rounding error. However, the maximum of this error,
, is a vanishing value.
Alternative proof
The proof consists of transforming the left-hand side (in the statement of the theorem) to the right-hand side by three approximations.
First, according to
Stirling's formula, the factorial of a large number ''n'' can be replaced with the approximation
:
Thus
:
Next, the approximation
is used to match the square root above to the desired square root on the right-hand side.
:
Finally, the expression is rewritten as an exponential,
(the standardized value for ''k'') is introduced, and the Taylor Series approximation for ln(1+w) is used:
:
Then
:
Each "
" in the above argument is a statement that two quantities are asymptotically equivalent as ''n'' increases, in the same sense as in the original statement of the theorem—i.e., that the ratio of each pair of quantities approaches 1 as ''n'' → ∞.
See also
*
Poisson limit theorem an alternative approximation of the binomial distribution for large values of ''n''.
Notes
{{DEFAULTSORT:De Moivre-Laplace, Theorem Of
1738 introductions
Central limit theorem
Abraham de Moivre