A Generic Framework for Collaborative Filtering Based on Social Collective Recommendation

Homann Leschek, Maleszka Bernadetta, Martins Denis, Vossen Gottfried


Abstract

Collaborative filtering has been considered the most used approach for recommender systems in both practice and research. Unfortunately, traditional collaborative filtering suffers from the so-called cold-start problem, which is the challenge to recommend items for an unknown user. In this paper, we introduce a generic framework for social collective recommendations targeting to support and complement traditional recommender systems to achieve better results. Our framework is composed of three modules, namely, a User Clustering module, a Representative module, and an Adaption module. The User Clustering module aims to find groups of users, the Representative module is responsible for determining a representative of each group, and the Adaption module handles new users and assigns them appropriately. By the composition of the framework, the cold-start problem is alleviated.

Keywords
recommendation; collaborative filtering



Publication type
Research article in proceedings (conference)

Peer reviewed
Yes

Publication status
Published

Year
2018

Conference
International Conference on Computational Collective Intelligence (ICCCI 2018)

Venue
Bristol

Volume
11055

Book title
Computational Collective Intelligence

Editor
Ngoc Thanh Nguyen, Elias Pimenidis, Zaheer Khan, Bogdan Trawiński

Start page
238

End page
247

Volume
11055

Title of series
Lecture Notes in Computer Science

Publisher
Springer International Publishing

Place
Heidelberg

Language
English

ISSN
0302-9743

ISBN
978-3-319-98442-1