Sequential Recommendation in Online Games with Multiple Sequences, Tasks and User Levels

13 Feb 2021 Si Chen Yuqiu Qian Hui Li Chen Lin

Online gaming is a multi-billion-dollar industry, which is growing faster than ever before. Recommender systems (RS) for online games face unique challenges since they must fulfill players' distinct desires, at different user levels, based on their action sequences of various action types... (read more)

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