Laptop Price Prediction with Machine Learning Using Regression Algorithm

Main Article Content

Astri Dahlia Siburian
Daniel Ryan Hamonangan Sitompul
Stiven Hamonangan Sinurat
Andreas Situmorang
Ruben Ruben
Dennis Jusuf Ziegel
Evta Indra

Abstract

Since the COVID-19 pandemic, many activities are now carried out in a Work From Home (WFH) manner. According to data from the Central Statistics Agency (BPS) of East Java, in 2021, large and medium-sized enterprises (UMB) who choose to work WFH partially are 32.37%, and overall WFH is 2.24% (BPS East Java, 2021 ). With this percentage of 32.37%, many people need a work device (in this case, a laptop) that can boost their productivity during WFH. WFH players must have laptops with specifications that match their needs to encourage productivity. To prevent buying laptops at overpriced prices, a way to predict laptop prices is needed based on the specified specifications. This study presents a Machine Learning model from data acquisition (Data Acquisition), Data Cleaning, and Feature Engineering for the Pre-Processing, Exploratory Data Analysis stages to modeling based on regression algorithms. After the model is made, the highest accuracy result is 92.77%, namely the XGBoost algorithm. With this high accuracy value, the model created can predict laptop prices with a minimum accuracy above 80%.

Article Details

How to Cite
[1]
A. D. Siburian, “Laptop Price Prediction with Machine Learning Using Regression Algorithm”, JUSIKOM PRIMA, vol. 6, no. 1, pp. 87-91, Sep. 2022.
Section
Articles

Most read articles by the same author(s)

1 2 3 > >>