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Logistic regression is what kind of learning algorithm?: a. supervised/classification b. unsupervised/classification supervis

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Logistic Regression algorithm has discrete valued output because the variable in logistic regression is categorical and not continuous. And because of this discrete valued output it is used as a classification algorithm that can give results like yes/no, true/false etc.

And by getting the results as yes/no, true/false we are basically predicting a certain target variable so therefore it is supervised learning algorithm.

=> Therefore the correct answer is a. supervised/classification.

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Logistic regression is what kind of learning algorithm?: a. supervised/classification b. unsupervised/classification supervised/regression d. unsupervised/regression C.
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