using Machine Learning Algorithm to classification AppleStore application

Overview

AppleStore-classification-with-Machine-learning-Algo-

using Machine Learning Algorithm to classification AppleStore application.

the first step : 1: preprocessin

 1.1: remove nulls
 1.2: normalize data 
 1.3: replace string to int in coulmn rate 
  1. using machine learning to classification Algorithm

    2.1: use svm algorithm ,and achive score 0.6254510921177588

    2.2: use DecisionTreeClassifier algorithm ,and achive score 0.54510921177588

    2.3: use LogisticRegression algorithm ,and achive score 0.454510921177588

Owner
Mohammed Hussien
Mohammed Hussien
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