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Improving recommender systems’ performance on cold-start users and controversial items by a new similarity model

Masoud Mansoury (Department of Computer Engineering and Information Technology, Amirkabir University of Technology, Tehran, Iran)
Mehdi Shajari (Department of Computer Engineering and Information Technology, Amirkabir University of Technology, Tehran, Iran)

International Journal of Web Information Systems

ISSN: 1744-0084

Article publication date: 20 June 2016

285

Abstract

Purpose

This paper aims to improve the recommendations performance for cold-start users and controversial items. Collaborative filtering (CF) generates recommendations on the basis of similarity between users. It uses the opinions of similar users to generate the recommendation for an active user. As a similarity model or a neighbor selection function is the key element for effectiveness of CF, many variations of CF are proposed. However, these methods are not very effective, especially for users who provide few ratings (i.e. cold-start users).

Design/methodology/approach

A new user similarity model is proposed that focuses on improving recommendations performance for cold-start users and controversial items. To show the validity of the authors’ similarity model, they conducted some experiments and showed the effectiveness of this model in calculating similarity values between users even when only few ratings are available. In addition, the authors applied their user similarity model to a recommender system and analyzed its results.

Findings

Experiments on two real-world data sets are implemented and compared with some other CF techniques. The results show that the authors’ approach outperforms previous CF techniques in coverage metric while preserves accuracy for cold-start users and controversial items.

Originality/value

In the proposed approach, the conditions in which CF is unable to generate accurate recommendations are addressed. These conditions affect CF performance adversely, especially in the cold-start users’ condition. The authors show that their similarity model overcomes CF weaknesses effectively and improve its performance even in the cold users’ condition.

Keywords

Citation

Mansoury, M. and Shajari, M. (2016), "Improving recommender systems’ performance on cold-start users and controversial items by a new similarity model", International Journal of Web Information Systems, Vol. 12 No. 2, pp. 126-149. https://doi.org/10.1108/IJWIS-07-2015-0024

Publisher

:

Emerald Group Publishing Limited

Copyright © 2016, Emerald Group Publishing Limited

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