9.16 MAXIMUM LIKELIHOOD ESTIMATION

Consider estimating parameter θ where its prior distribution is not known and cannot be used in MAP estimation. For this condition, we can develop an estimator similar to the MAP estimator which does not require any information about the prior distribution.

Definition: Likelihood Function The likelihood function associated with N random variables is the conditional pdf

(9.257) Numbered Display Equation

The log-likelihood function is

(9.258) Numbered Display Equation

where usually is the natural logarithm.

The likelihood function is a function of the unknown parameter θ for specific outcomes of the samples . We are interested in the value of θ for which is maximum; it is the “most likely” value for particular outcomes. The log-likelihood function is usually preferred because the logarithm often simplifies ...

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