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Encyclopedia :
M :
MA :
MAX :
Maximum likelihood |
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Maximum likelihoodIn statistics, the method of maximum likelihood, pioneered by geneticist and statistician Sir Ronald A. Fisher, is a method of point estimation that estimates an unobservable population with parameter(s) that maximizes the likelihood function. For the moment, let denote the unobservable population parameter(s) to be estimated from the probability density function (pdf) .
(The log-likelihood is closely related to information entropy and Fisher information.) This maximum can be found with calculus (setting the first derivative to zero) or by using non-linear optimization techniques for more complex likelihood functions. Maximum-likelihood estimators are sometimes better than unbiased estimatorss. However, the bias of maximum-likelihood estimators can be substantial. Invariance principle/propertyIf is the maximum likelihood estimator for , then the ML estimator for (if the function is a one to one function) is . An example: estimating the parameter of a binominal distributionIn a large population of voters, the proportion p who will vote "yes" is unobservable, and is to be estimated based on a political opinion poll. A sample of 10 (n) voters is chosen randomly, and it is observed that 3 (k) of those n voters will vote "yes". Then the likelihood function (based on the binomial distribution in this case) is:
We can use the first derivative of the logarithm of the likelihood function (with respect to p) and set it to zero to analytically find the maximum:
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