In
Probability Theory, the
Large Deviations Theory concerns the asymptotic behaviour of remote tails of sequences of probability distributions. Some basic ideas of the theory can be tracked back to
Laplace and
Cramér, although a clear unified formal definition was introduced in
1966 by
Varadhan. Large Deviations Theory formalizes the heuristic ideas of
concentration of measures and widely generalizes the notion of
convergence of probability measures.
Roughly speaking, Large Deviation Theory concerns itself with the exponential decay of the probability measures of certain kinds of extreme or tail events, as the number of observations grows arbitrarily large.
Introductory examples
An elementary example
Consider a sequence of independent tosses of a fair
coin. The possible outcomes could be head or tail. Let us denote the possible outcome of the i-th trial by
, where we encode head as -1 and tail as 1. Now let
denote the mean value after
trials, namely
Then lies between -1 and 1. From the law of large numbers (and also
from our experience) we know that as N become larger and larger, becomes
closer and closer to with increasing probability. Let us make this statement more precise. For a given value , let us compute the probability that
is greater than . By the Chernoff inequality it can be shown that
. This bound is rather sharp, in a suitable technical sense.
In other words the probability is decaying exponentially rapidly as N grows large, at a rate depending on x.
Large Deviations for sums of independent random variables
In the above mentioned example of coin-tossing we tacitly assumed that each toss is an
independent trial. And for each toss, the probability of getting head or tail is always the
same. This makes the random numbers
independent and identically distributed (i.i.d.). For i.i.d. variables
whose common distribution satisfies a certain growth condition, large deviation theory states that the following limit exists:
The function is called the "rate function" or "Cramer function" or sometimes the "entropy function". Roughly speaking, the existence of this limit is what establishes the above mentioned exponential decay and allows us to conclude that for large ,
takes the form:
which is the basic result of Large Deviations Theory in this setting. Note that the inequality given in the first paragraph, as opposed to the asymptotic formula presented here, requires an additional argument.
If we know the probability distribution of , an explicit
expression for the rate function can be obtained. This is given by a
Legendre transform
where the function is called the cumulant generating function (CGF), given by
Here denotes expectation value with respect to the probability
distribution function of and is any one of
s. If follows a Gaussian distribution,
the rate function becomes a parabola with its apex at the mean of the Gaussian
distribution.
If the condition of Independent Identical Distribution is relaxed, particularly
if the numbers are not independent but nevertheless
satisfy the Markov Property, the basic large deviations result stated above can be generalized.
Formal Definition
Given a
Polish space let
be a sequence of
Borel probability measures on
, let
be a sequence of positive real numbers such that
, and finally let
be a
lower semicontinuous functional on
. The sequence
is said to satisfy a
Large deviation principle with
speed and
rate ,
iff for each Borel
measurable set
where and denote respectively the closure and interior of .
Brief History
The first rigorous results concerning Large Deviations are due to the Swedish mathematician
Harald Cramér, who applied them to model the insurance business. From the point
of view of an insurance company, the earning is at a constant rate per month
(the monthly premium) but the claims come randomly. For the company to be successful
over a certain period of time (preferably many months), the total earning should
exceed the total claim. Thus to estimate the premium you have to ask the following
question : "What should we choose as the premium
such that over
months the total claim
should
be less than
? " This is clearly the same question asked by
the large deviations theory. Cramer gave a solution to this question for i.i.d.
gaussian random variables, where the rate function is expressed as a
power series.
The results we have quoted above were later obtained by
Chernoff, among other people. A very
incomplete list of mathematicians who have made important advances would
include
S.R.S. Varadhan (who has won the Abel prize),
D. Ruelle and
O.E. Lanford.
Applications
Establishing Large Deviations Principles is one of the most effective ways to gather information out of a probabilistic model. Some of the best known applications of Large Deviation Theory rise in
Statistical Mechanics,
Quantum Mechanics,
Information Theory and
Risk Management.
Applications to Statistical Mechanics: Large Deviation and Entropy
The rate function is related to the
entropy in statistical mechanics. This can be heuristically seen
in the following way. In statistical mechanics the entropy of a particular macro-state is related
to the number of micro-states which corresponds to this macro-state. In our coin tossing example the
mean value
could designate a particular macro-state. And the particular sequence of
heads and tails which gives rise to a particular value of
constitutes a particular
micro-state. Loosely speaking a macro-state having more number of micro-states giving rise to it,
has higher entropy. And a state with higher entropy has more chance of being realised in actual
experiments. The macro-state with mean value of zero (as many heads as tails) has the highest number micro-states giving rise to it and it is indeed the state with the highest entropy. And in most practical situation
we shall indeed obtain this macro-state for large number of trials. The "rate function" on the other
hand measures the probability of appearance of a particular macro-state. The smaller the rate function
the higher is the chance of a macro-state appearing. In our coin-tossing the value of the "rate function" for mean value
equal to zero is zero. In this way one can see the "rate function" as the negative of the "entropy".
References
Bibliography
- Entropy, Large Deviations and Statistical Mechanics by R.S. Ellis, Springer Publication. ISBN 3-540-29059-1
- Large Deviations for Performance Analysis by Alan Weiss and Adam Shwartz. Chapman and Hall ISBN 0-412-06311-5
- Large Deviations Techniques and Applications by Amir Dembo and Ofer Zeitouni. Springer ISBN 0-387-98406-2
- Random Perturbations of Dynamical Systems by M.I. Freidlin and A.D. Wentzell. Springer ISBN 0-387-98362-7
See also
External links