In contrast to traditional online videos, live multi-streaming supports real-time social interactions between multiple streamers and viewers, such as donations. However, donation and multi-streaming channel recommendations are challenging due to complicated streamer and viewer relations, asymmetric communications, and the tradeoff between personal interests and group interactions. In this paper, we introduce Multi-Stream Party (MSP) and formulate a new multi-streaming recommendation problem, called Donation and MSP Recommendation (DAMRec). We propose Multi-stream Party Recommender System (MARS) to extract latent features via socio-temporal coupled donation-response tensor factorization for donation and MSP recommendations. Experimental results on Twitch and Douyu manifest that MARS significantly outperforms existing recommenders by at least 38.8% in terms of hit ratio and mean average precision.
CITATION STYLE
Lai, H. C., Tsai, J. Y., Shuai, H. H., Huang, J. L., Lee, W. C., & Yang, D. N. (2020). Live Multi-Streaming and Donation Recommendations via Coupled Donation-Response Tensor Factorization. In International Conference on Information and Knowledge Management, Proceedings (pp. 665–674). Association for Computing Machinery. https://doi.org/10.1145/3340531.3411925
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