Publication: Towards the Selection of Distance Metrics for k-NN Classifier in Students' Performance Prediction Modeling
Date
2023
Authors
Khan I.
Mohamed Zabil M.H.
Ahmad A.R.
Jabeur N.
Journal Title
Journal ISSN
Volume Title
Publisher
Institute of Electrical and Electronics Engineers Inc.
Abstract
This paper investigates the impact of changing distance metrics on the performance of the k-NN classifier. The study investigates the variation in models performance with changing distance metric and value of k in the context of students' performance prediction models. The research utilizes datasets specifically designed for students' performance prediction modeling. Starting with a I-NN model, the experiments increment the value of k by 2 until the size of the dataset is reached. The experiments are repeated with different distance metrics derived from Minkowski derivation, including Euclidean, Manhattan, and Chebyshev. The findings indicate that there is no unanimously dominant distance metric for every dataset. However, the Euclidean and Manhattan distance metrics emerge effective, while Chebyshev exhibits lower performance. The research concludes Euclidean and Manhattan distance metrics as appropriate metrics for students' performance prediction modeling using the k-NN classifier. � 2023 IEEE.
Description
Keywords
Chebyshev , Euclidean , k-Nearest Neighbor (k-NN) , Machine Learning , Manhattan , Students' Performance Prediction , Machine learning , Nearest neighbor search , Students , Chebyshev , Distance metrics , Euclidean , K-near neighbor , Machine-learning , Manhattans , Performance prediction , Performance prediction models , Student performance , Student' performance prediction , Forecasting