Title
Music recommender using deep embedding-based features and behavior-based reinforcement learning
Abstract
With the rapid increase of digital music on online music platforms, it has become difficult for users to find unknown but interesting songs. Although many collaborative filtering or content based recommendation methods have been proposed, they have various relatively serious some problems, including cold start, diversity of recommendations. etc. Therefore, we propose a reinforcement personal music recommendation system (RPMRS) to address these problems. RPMRS comprises two main components. First, deep representation of audio and lyrics extracted by WaveNet and Word2Vec models, respectively, and apply a proposed content based recommendation method from these. Second, we employ reinforcement learning is to learn user preferences from their song playing log. Experimental results confirm, that hybrid features are superior to audio or lyrics based features for content recommendation, largely because independent audio features significantly outperform lyrics features; and reinforcement learning improves personalized recommendations. Overall, the proposed RPMRS provides dynamic and personalized music recommendations for the user.
Year
DOI
Venue
2021
10.1007/s11042-019-08356-9
MULTIMEDIA TOOLS AND APPLICATIONS
Keywords
DocType
Volume
Music recommendation, Content based recommendation, Reinforcement learning
Journal
80
Issue
ISSN
Citations 
26-27
1380-7501
1
PageRank 
References 
Authors
0.37
0
7
Name
Order
Citations
PageRank
Jia-Wei Chang141.09
Ching-Yi Chiou210.37
Jia-Yi Liao310.37
Ying-Kai Hung410.37
Chien-Che Huang510.37
Kuan-Cheng Lin610.37
Ying-Hung Pu710.71