Assessing distributed collaborative recommendations in different opportunistic network scenarios
N/D
Tipo de produção
Artigo
Data de publicação
2020-08-01
Texto completo (DOI)
Periódico
International Journal of Grid and Utility Computing
Editor
Texto completo na Scopus
Citações na Scopus
1
Autores
BARBOSA, L. N.
GEMMELL, J. F.
HORVATH, M.
HEIMFARTH, T.
Orientadores
Resumo
© 2020 Inderscience Enterprises Ltd.Mobile devices are common throughout the world, even in countries with limited internet access and even when natural disasters disrupt access to a centralised infrastructure. This access allows for the exchange of information at an incredible pace and across vast distances. However, this wealth of information can frustrate users as they become inundated with irrelevant or unwanted data. Recommender systems help to alleviate this burden. In this work, we propose a recommender system where users share information via an opportunistic network. Each device is responsible for gathering information from nearby users and computing its own recommendations. An exhaustive empirical evaluation was conducted on two different data sets. Scenarios with different node densities, velocities and data exchange parameters were simulated. Our results show that in a relatively short time when a sufficient number of users are present, an opportunistic distributed recommender system achieves results comparable to that of a centralised architecture.
Citação
BARBOSA, L. N.; GEMMELL, J. F.; HORVATH, M.; HEIMFARTH, T. Assessing distributed collaborative recommendations in different opportunistic network scenarios. International Journal of Grid and Utility Computing, v. 11, n. 5, p. 646-661 aug. 2020.
Palavras-chave
Keywords
Decentralised recommender systems; Device-to-device communications; Machine learning; Mobile ad hoc networks; Opportunistic networks; Recommender systems; User-based collaborative filtering
Assuntos Scopus
Collaborative recommendation; Empirical evaluations; Exchange of information; Exchange parameters; Internet access; Natural disasters; Opportunistic networks; Wealth of information