Abstract

In statistics, Maximum Likelihood Estimation (MLE) is a method of estimating the parameters of a particular statistical model, finding parameter values that maximize probability, observations, and the parameters are specified. The MLE can be seen as a special case of maximum post-positive estimation (MAP), which includes a uniform preventive distribution of parameters, or as a variant of the MAP that ignores the above and is therefore unregulated. Now let's look at an alternative to the MVU estimator, which is desirable in situations where the minimum variance unbiased (MVU) estimator does not exist or cannot be found, even if it exists. This estimator, which relies on the principle of maximum likelihood, is primarily the common method for obtaining a practical estimator. It has the clear advantage of being a crank turning procedure, which allows you to implement it for complicated estimation problems. A clear advantage of MLE is that it can be found numerically for a given data-set. The safest way to find the MLE is to search the grid, as long as the space between the searches are small enough, we are sure to find the MLE. Keywords: Maximum Likelihood Estimation , minimum variance unbiased, Estimator, Probability Distribution Function. DOI: 10.7176/ISDE/11-3-05 Publication date: June 30 th 2020

Highlights

  • The estimator using Maximum Likelihood (MLE) is an important tool for determining the real chances of the hypothetical communication model

  • The Maximum Likelihood Estimator (MLE) is a method for assessing the parameters of a particular statistical model that determines the parameter values that allow observations to be made under certain conditions

  • MLE can be seen as a special case of the rear maximum estimate with a uniform preventive distribution of parameters or as a variant of that ignores the above and is not regulated

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Summary

INTRODUCTION

The estimator using Maximum Likelihood (MLE) is an important tool for determining the real chances of the hypothetical communication model. A standard communication model is chosen based on empirical data. All these models have unique parameters that have these characteristics. The determination of these parameters for the chosen model is necessary to model the communication channel within reach. The Maximum Likelihood Estimator (MLE) is a method for assessing the parameters of a particular statistical model that determines the parameter values that allow observations to be made under certain conditions. Maximum probability (MLE) is an important tool for determining the actual possibilities of the hypothetical communication model

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