Abstract

One of the main concerns for online shopping websites is to provide efficient and customized recommendations to a very large number of users based on their preferences. Collaborative filtering (CF) is the most famous type of recommender system method to provide personalized recommendations to users. CF generates recommendations by identifying clusters of similar users or items from the user-item rating matrix. This cluster of similar users or items is generally identified by using some similarity measurement method. Among numerous proposed similarity measure methods by researchers, the Pearson correlation coefficient (PCC) is a commonly used similarity measure method for CF-based recommender systems. The standard PCC suffers some inherent limitations and ignores user rating preference behavior (RPB). Typically, users have different RPB, where some users may give the same rating to various items without liking the items and some users may tend to give average rating albeit liking the items. Traditional similarity measure methods (including PCC) do not consider this rating pattern of users. In this article, we present a novel similarity measure method to consider user RPB while calculating similarity among users. The proposed similarity measure method state user RPB as a function of user average rating value, and variance or standard deviation. The user RPB is then combined with an improved model of standard PCC to form an improved similarity measure method for CF-based recommender systems. The proposed similarity measure is named as improved PCC weighted with RPB (IPWR). The qualitative and quantitative analysis of the IPWR similarity measure method is performed using five state-of-the-art datasets (i.e. Epinions, MovieLens-100K, MovieLens-1M, CiaoDVD, and MovieTweetings). The IPWR similarity measure method performs better than state-of-the-art similarity measure methods in terms of mean absolute error (MAE), root mean square error (RMSE), precision, recall, and F-measure.

Highlights

  • The advancements in machine learning revolutionized the e-commerce business in the last decade

  • We have proposed an improved similarity measure method that uses the user’s rating preference behavior (RPB) pattern to find similar users

  • The RPB pattern is modeled as a function of user rating averages and user variance or standard deviation

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Summary

Introduction

The advancements in machine learning revolutionized the e-commerce business in the last decade. The companies are taking advantage of these advancements by providing users a plethora of online resources for shopping. Users connect with their friends and colleagues through social networking sites and get reviews about different products. This paradigm shift of shopping and user attitude led to the information overload problem, where users can buy items from millions of online shopping stores. This leads companies to deal with socalled big data problem [1]. Recommender systems aim at solving the information overload problem by recommending products and information to users based on their need and preferences of the community [2, 3]

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