4.7 Article

A Hybrid Recommender System for Improving Automatic Playlist Continuation

Journal

IEEE TRANSACTIONS ON KNOWLEDGE AND DATA ENGINEERING
Volume 33, Issue 5, Pages 1819-1830

Publisher

IEEE COMPUTER SOC
DOI: 10.1109/TKDE.2019.2952099

Keywords

Recommender systems; Coherence; Semantics; Cognition; Music; Prediction algorithms; User experience; Hybrid recommender system; automatic playlist continuation; music recommender systems; latent dirichlet allocation; case-based reasoning; beyond accuracy dimensions

Funding

  1. Catalan Agency for Management of University and Research Grants (AGAUR) [2017 SGR 574]
  2. European Regional Development Fund (ERDF), through the Incentive System to Research and Technological development, within the Portugal2020 Competitiveness and Internationalization Operational Program - COMPETE 2020 [POCI-01-0145FEDER-006961]
  3. Portuguese Foundation for Science and Technology (FCT) [UID/EEA/50014/2013]

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This study introduces a hybrid recommender system HybA, which focuses on improving the quality of music playlist recommendations by considering semantic similarity at the recommendation moment, and providing support for dimensions beyond accuracy, such as coherence and diversity. Experiments have shown that this system outperforms other state of the art techniques in terms of accuracy, while balancing between diversity and coherence.
Although widely used, the majority of current music recommender systems still focus on recommendations' accuracy, user preferences and isolated item characteristics, without evaluating other important factors, like the joint item selections and the recommendation moment. However, when it comes to playlist recommendations, additional dimensions, as well as the notion of user experience and perception, should be taken into account to improve recommendations' quality. In this work, HybA, a hybrid recommender system for automatic playlist continuation, that combines Latent Dirichlet Allocation and Case-Based Reasoning, is proposed. This system aims to address similar concepts rather than similar users. More than generating a playlist based on user requirements, like automatic playlist generation methods, HybA identifies the semantic characteristics of a started playlist and reuses the most similar past ones, to recommend relevant playlist continuations. In addition, support to beyond accuracy dimensions, like increased coherence or diverse items' discovery, is provided. To overcome the semantic gap between music descriptions and user preferences, identify playlist structures and capture songs' similarity, a graph model is used. Experiments on real datasets have shown that the proposed algorithm is able to outperform other state of the art techniques, in terms of accuracy, while balancing between diversity and coherence.

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