Drug prediction

Overview

drug-prediction

I have collected data about a set of patients, all of whom suffered from the same illness. During their course of treatment, each patient responded to one of 5 medications, Drug A, Drug B, Drug c, Drug x and y. Part of our job is to build a model to find out which drug might be appropriate for a future patient with the same illness. The feature sets of this dataset are Age, Sex, Blood Pressure, and Cholesterol of patients, and the target is the drug that each patient responded to.

It is a sample of binary classifier, and I can use the training part of the dataset to build a decision tree, and then use it to predict the class of a unknown patient, or to prescribe it to a new patient. Then we use the trained decision tree to predict the class of a unknown patient, or to find a proper drug for a new patient.

My 1 class is False but other classes are True in my Confusion Matrix

Owner
Khazar
ML and DL learner
Khazar
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