Used Car Price Prediction using K-Nearest Neighbor Based Model

Authors

  • K.Samruddhi
  • Dr. R. Ashok Kumar

DOI:

https://doi.org/10.29027/IJIRASE.v4.i3.2020.686-689

Keywords:

K Nearest Neighbor, Prediction, Used Cars Accuracy, Preprocessing, Regression, Cross-validation, K-Fold

Abstract

Predicting the price of used cars is one of the significant and interesting areas of analysis. As an increased demand in the second-hand car market, the business for both buyers and sellers has increased. For reliable and accurate prediction it requires expert knowledge about the field because of the price of the cars dependent on many important factors. This paper proposed a supervised machine learning model using KNN (K Nearest Neighbor) regression algorithm to analyze the price of used cars. We trained our model with data of used cars which is collected from the Kaggle website. Through this experiment, the data was examined with different trained and test ratios. As a result, the accuracy of the proposed model is around 85% and is fitted as the optimized model.

Author Biographies

K.Samruddhi

Department of ISE, B.M.S College of Engineering, Affiliated to VTU
Bangalore, Karnataka

Dr. R. Ashok Kumar

Department of ISE, B.M.S College of Engineering, Affiliated to VTU
Bangalore, Karnataka

Additional Files

Published

15-09-2020