Question

In: Statistics and Probability

Use maximum likelihood to find the parameters in logistic regression, where the domain is x and...

Use maximum likelihood to find the parameters in logistic regression, where the domain is x and the sigmoid is used for the ’activation’.

Solutions

Expert Solution

The parameter estimation of logistic regression is discussed in detail as below,

Here is the estimation of logistic regression parameter by maximum likelihood. We generally used the statistical software for that because it is an iterative procedure and also time consuming and the Software gives us accurate result.

Hope you understood how maximum likelihood is used in logistic regression to find out the parameter.

If you understood then RATE POSITIVE ?.in case of any queries about this then feel free to ask in comment box.

Thank you.


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