Predicting Mobile Price Range Using Classification Techniques

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Date

2020-12-17

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Daffodil International University

Abstract

Machine learning-based classification techniques help to solve the problem related to decision making. In many areas of price, prediction is used like housing price prediction, stock price prediction different classification algorithms used. Some of them are used artificial neural networks. In this study, three different classification techniques used for predicting the mobile price range. The first one is Naïve Bayes second one is Decision Tree and the third one is the Random Forest machine learning algorithm. The accuracy got my first two techniques respectively 83% and 84%. As the accuracy of Naïve Bayes is lower than the decision tree so Naïve Bayes is not considered. So, for improving the accuracy of the Decision Tree, the parameter has been pruned and later Random Forest has been used. It gives 90% accuracy for this dataset. And also, performance evaluation is performed for Decision Tree and Random forest like Precision, Recall.

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Machine Learning, Artificial Neural Networks, Decision Trees, Price Formation

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