Enhancing Traditional Recommender Systems via Social Communities

Collaborative Filtering (CF) has become the most popular approach for developing Recommender Systems in diverse business applications. Unfortunately, problems such as the cold-start problem (i.e., new users or items enter the system and for those no previous preference information is available) and...

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Main Authors: Leschek Homann, Denis Mayr Lima Martins, Gottfried Vossen, Karsten Kraume
Format: Article
Language:English
Published: World Scientific Publishing 2019-02-01
Series:Vietnam Journal of Computer Science
Subjects:
Online Access:http://www.worldscientific.com/doi/pdf/10.1142/S2196888819500040
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spelling doaj-08a2b24ee3d744a3aa1fed4db1d1c2bc2020-11-24T21:20:51ZengWorld Scientific PublishingVietnam Journal of Computer Science2196-88882196-88962019-02-016131610.1142/S219688881950004010.1142/S2196888819500040Enhancing Traditional Recommender Systems via Social CommunitiesLeschek Homann0Denis Mayr Lima Martins1Gottfried Vossen2Karsten Kraume3European Research Center for Information Systems (ERCIS), University of Münster, Leonardo-Campus 3, 48149 Münster, GermanyEuropean Research Center for Information Systems (ERCIS), University of Münster, Leonardo-Campus 3, 48149 Münster, GermanyEuropean Research Center for Information Systems (ERCIS), University of Münster, Leonardo-Campus 3, 48149 Münster, GermanyEuropean Research Center for Information Systems (ERCIS), University of Münster, Leonardo-Campus 3, 48149 Münster, GermanyCollaborative Filtering (CF) has become the most popular approach for developing Recommender Systems in diverse business applications. Unfortunately, problems such as the cold-start problem (i.e., new users or items enter the system and for those no previous preference information is available) and the gray sheep problem (i.e., cases in which a user profile does not match any other profile in the user community) are widely recognized for hindering recommendation effectiveness of traditional CF methods. To alleviate such problems, substantial research has focused on enhancing CF with social information about users (e.g., social relationships and communities). However, despite the crescent interest in social-based approaches, researches and practitioners face the challenge of developing their own Recommender System architecture for appropriately combining social and collaborative filtering methods to improve recommendation results. In this paper, we address this issue by introducing a flexible architecture to support researchers and practitioners in the task of designing real-world Recommender Systems that exploit social network data. We focus on detailing our proposed architecture modules and their interplay, potential algorithms for extracting and combining relevant social information, and candidate technologies for handling diverse and massive data volumes. Additionally, we provide an empirical analysis demonstrating the effectiveness of the proposed architecture on alleviating the cold-start problem over a concrete experimental case.http://www.worldscientific.com/doi/pdf/10.1142/S2196888819500040Recommender Systemssocial communitiescold-start problem
collection DOAJ
language English
format Article
sources DOAJ
author Leschek Homann
Denis Mayr Lima Martins
Gottfried Vossen
Karsten Kraume
spellingShingle Leschek Homann
Denis Mayr Lima Martins
Gottfried Vossen
Karsten Kraume
Enhancing Traditional Recommender Systems via Social Communities
Vietnam Journal of Computer Science
Recommender Systems
social communities
cold-start problem
author_facet Leschek Homann
Denis Mayr Lima Martins
Gottfried Vossen
Karsten Kraume
author_sort Leschek Homann
title Enhancing Traditional Recommender Systems via Social Communities
title_short Enhancing Traditional Recommender Systems via Social Communities
title_full Enhancing Traditional Recommender Systems via Social Communities
title_fullStr Enhancing Traditional Recommender Systems via Social Communities
title_full_unstemmed Enhancing Traditional Recommender Systems via Social Communities
title_sort enhancing traditional recommender systems via social communities
publisher World Scientific Publishing
series Vietnam Journal of Computer Science
issn 2196-8888
2196-8896
publishDate 2019-02-01
description Collaborative Filtering (CF) has become the most popular approach for developing Recommender Systems in diverse business applications. Unfortunately, problems such as the cold-start problem (i.e., new users or items enter the system and for those no previous preference information is available) and the gray sheep problem (i.e., cases in which a user profile does not match any other profile in the user community) are widely recognized for hindering recommendation effectiveness of traditional CF methods. To alleviate such problems, substantial research has focused on enhancing CF with social information about users (e.g., social relationships and communities). However, despite the crescent interest in social-based approaches, researches and practitioners face the challenge of developing their own Recommender System architecture for appropriately combining social and collaborative filtering methods to improve recommendation results. In this paper, we address this issue by introducing a flexible architecture to support researchers and practitioners in the task of designing real-world Recommender Systems that exploit social network data. We focus on detailing our proposed architecture modules and their interplay, potential algorithms for extracting and combining relevant social information, and candidate technologies for handling diverse and massive data volumes. Additionally, we provide an empirical analysis demonstrating the effectiveness of the proposed architecture on alleviating the cold-start problem over a concrete experimental case.
topic Recommender Systems
social communities
cold-start problem
url http://www.worldscientific.com/doi/pdf/10.1142/S2196888819500040
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