Discretization Based Framework to Improve
the Recommendation Quality
Bilal Ahmed and Wang Li
Department
of Information and Computer, Taiyuan University of Technology, China
Abstract: Recommendation
systems are information filtering software that delivers suggestions about
relevant stuff from a massive collection of data. Collaborative filtering
approaches are the most popular in recommendations. The primary concern of any
recommender system is to provide favorable recommendations based on the rating
prediction of user preferences. In this article, we propose a novel
discretization based framework for collaborative filtering to improve rating
prediction. Our framework includes discretization-based preprocessing, chi-square based attribution selection, and K-Nearest
Neighbors (KNN) based similarity computation. Rating prediction affords some
basis for the judgment to decide whether recommendations are generated or not,
subject to the ratio of performance of any recommendation system. Experiments
on two datasets MovieLens and BookCrossing, demonstrate the effectiveness of
our method.
Keywords: Recommender systems,
collaborative filtering, prediction, discretization, chi-square.
Received October 21, 2019; accepted July 20, 2020
https://doi.org/10.34028/iajit/18/3/13