Abstract

Recommender systems are widespread due to their ability to help Web users surf the Internet in a personalized way. For example, collaborative recommender system is a powerful Web personalization tool for suggesting many useful items to a given user based on opinions collected from his neighbors. Among many, similarity measure is an important factor affecting the performance of the collaborative recommender system. However, the similarity measure itself largely depends on the overlapping between the user profiles. Most of the previous systems are tested on a predefined number of common items and neighbors. However, the system performance may vary if we changed these parameters. The main aim of this paper is to examine the performance of the collaborative recommender system under many similarity measures, common set cardinalities, rating mean groups, and neighborhood set sizes. For this purpose, we propose a modified version for the mean difference weight similarity measure and a new evaluation metric called users’ coverage for measuring the recommender system ability for helping users. The experimental results show that the modified mean difference weight similarity measure outperforms other similarity measures and the collaborative recommender system performance varies by varying its parameters; hence we must specify the system parameters in advance.

Highlights

  • Today, Web users face an abundance of choices when they surf the Web

  • This paper studies three parameters of the collaborative recommender system, namely, common set cardinality, the user rating mean group, and the number of neighbors for a given active user which have a direct effect on the performance of the similarity measure

  • One important way for enhancing the collaborative recommender system (CRS) accuracy is to select a similarity measure that produces a close set of Common set cardinality

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Summary

Introduction

Web personalization tools become necessary to offer Web users personalized items they may like. These systems become available in many Web sites that cover social networks, ecommerce, e-business, e-tourist, and many others [1, 2]. Different similarity measures often lead to different sets of neighbors for a given active user. A good similarity measure will produce a close set of neighbors for a given active user [3]. Many of the existing similarity measures for collaborative recommender systems rely on the overlapping between users. The size of this overlapping is not explored in detail where most of the previous work studied similarity measures based on a predefined number of common items [3,4,5,6,7,8]

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