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.
翻译:与传统的在线视频不同,现场多流支持多个流体和观众之间的实时社会互动,如捐赠。然而,捐赠和多流频道建议由于复杂的流体和观众关系、不对称的通信以及个人利益与群体互动之间的权衡而具有挑战性。在本文中,我们引入了多流党(MSP),并制定了新的多流建议问题,称为捐赠和MSP建议(DAMRec)。我们提议了多流党建议系统(MARS),以通过捐赠的社会-时际结合捐赠-响应拉强因子化(MARS)和MSP建议提取潜在特征。Twitch和Douyu的实验结果显示,MARS在点击率和平均精度方面明显超过现有推荐人的38.8%。