GMTL: A GART based multi-task learning model for multi-social-temporal prediction in online games

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Abstract

Multi-social-temporal (MST) data, which represent multi-attributed time series corresponding to the entities in multi-relational social network series, are ubiquitous in real-world and virtual-world dynamic systems, such as online games. Predictions over MST data such as social time series prediction and temporal link weight prediction are of great importance but challenging. They are affected by many complex factors, including temporal characteristics, social characteristics, collaborative characteristics, task characteristics and the intrinsic causality between them. In this paper, we propose a graph attention recurrent network (GART) based multitask learning model (GMTL) to fuse information across multiple social-temporal prediction tasks. Experiments on an MMORPG dataset demonstrate that GMTL outperforms the state-of-the-art baselines and can significantly improve performances of specific social-temporal prediction task with additional information from others. Our work has been deployed to several MMORPGs in practice and can also expand to many related multi-social-temporal prediction tasks in real-world applications. Case studies on applications for multi-social-temporal prediction show that GMTL produces great value in the actual business in NetEase Games.

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Tao, J., Gong, L., Fan, C., Chen, L., Ye, D., & Zhao, S. (2019). GMTL: A GART based multi-task learning model for multi-social-temporal prediction in online games. In International Conference on Information and Knowledge Management, Proceedings (pp. 2841–2849). Association for Computing Machinery. https://doi.org/10.1145/3357384.3357830

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