The concept of a 'normalizing constant' arises in
probability theory and a variety of other areas of
mathematics.
Definition and examples
In
probability theory, a 'normalizing constant' is a constant by which an everywhere nonnegative function must be multiplied in order that the area under its graph is 1, i.e., to make it a
probability density function or a
probability mass function.
[1][2] For example, we have
:
so that
:
is a probability density function.
[3] This is the density of the standard
normal distribution. (''Standard'', in this case, means the
expected value is 0 and the
variance is 1.)
Similarly,
:
and consequently
:
is a probability mass function on the set of all nonnegative integers.
[4] This is the probability mass function of the
Poisson distribution with expected value λ.
Note that if the probability density function is a function of various parameters, so too will be its normalizing constant. The parametrised normalizing constant for the
Boltzmann distribution plays a central role in
statistical mechanics. In that context, the normalizing constant is called the
partition function.
Bayes' theorem
Bayes' theorem says that the posterior probability measure is proportional to the product of the prior probability measure and the
likelihood function . ''Proportional to'' implies that one must multiply or divide by a normalizing constant in order to assign measure 1 to the whole space, i.e., to get a probability measure. In a simple discrete case we have
:
where P(H
0) is the prior probability that the hypothesis is true; P(D|H
0) is the
conditional probability of the data given that the hypothesis is true, but given that the data are known it is the
likelihood of the hypothesis (or its parameters) given the data; P(H
0|D) is the posterior probability that the hypothesis is true given the data. P(D) should be the probability of producing the data, but on its own is difficult to calculate, so an alternative way to describe this relationship is as one of proportionality:
:
.
Since P(H|D) is a probability, the sum over all possible (mutually exclusive) hypotheses should be 1, leading to the conclusion that
:
In this case, the
reciprocal of the value
:
is the ''normalizing constant''.
[5] It can be extended from countably many hypotheses to uncountably many by replacing the sum by an integral.
Non-probabilistic uses
The
Legendre polynomials are characterized by
orthogonality with respect to the uniform measure on the interval [− 1, 1] and the fact that they are 'normalized' so that their value at 1 is 1. The constant by which one multiplies a polynomial in order that its value at 1 will be 1 is a normalizing constant.
Orthonormal functions are normalized such that
:
with respect to some inner product <''f'', ''g''>.
The constant 1/√2 is used to establish the
hyperbolic functions cosh and sinh from the lengths of the adjacent and opposite sides of a
hyperbolic triangle.
Notes
1. ''Continuous Distributions'' at University of Alabama.
2. Feller, 1968, p. 22.
3. Feller, 1968, p. 174.
4. Feller, 1968, p. 156.
5. Feller, 1968, p. 124.
References
★
Continuous Distributions at Department of Mathematical Sciences: University of Alabama in Huntsville
★
An Introduction to Probability Theory and its Applications (volume I), , William, Feller, John Wiley & Sons, ,