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Research Article

Smartphone Price Prediction Using Machine Learning Techniques

Richard Honey1

Department of Economics, Christ (Deemed to be University), Bangalore, Delhi NCR Campus, India.

Published Online: March-April 2023

Pages: 603-607

Abstract

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Abstract: This research aimed to predict smart phone prices using two supervised machine learning algorithms: Decision Tree and Random Forest Regression. Data was collected from the Indian e-Commerce website Flip kart using Python libraries such as Beautiful Soup and Selenium, and was cleaned and pre-processed for analysis.

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Smartphone Price Prediction Using Machine Learning Techniques | IJIRE