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

02/13/2021
by   Si Chen, et al.
0

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. Although many sequential RS already exist, they are mainly single-sequence, single-task, and single-user-level. In this paper, we introduce a new sequential recommendation model for multiple sequences, multiple tasks, and multiple user levels (abbreviated as M^3Rec) in Tencent Games platform, which can fully utilize complex data in online games. We leverage Graph Neural Network and multi-task learning to design M^3Rec in order to model the complex information in the heterogeneous sequential recommendation scenario of Tencent Games. We verify the effectiveness of M^3Rec on three online games of Tencent Games platform, in both offline and online evaluations. The results show that M^3Rec successfully addresses the challenges of recommendation in online games, and it generates superior recommendations compared with state-of-the-art sequential recommendation approaches.

READ FULL TEXT
research
09/21/2018

Neural Multi-Task Recommendation from Multi-Behavior Data

Most existing recommender systems leverage user behavior data of one typ...
research
08/09/2022

Multi-Task Fusion via Reinforcement Learning for Long-Term User Satisfaction in Recommender Systems

Recommender System (RS) is an important online application that affects ...
research
10/26/2021

Multi-Faceted Hierarchical Multi-Task Learning for a Large Number of Tasks with Multi-dimensional Relations

There has been many studies on improving the efficiency of shared learni...
research
05/14/2014

Improving offline evaluation of contextual bandit algorithms via bootstrapping techniques

In many recommendation applications such as news recommendation, the ite...
research
04/12/2021

Personalized Bundle Recommendation in Online Games

In business domains, bundling is one of the most important marketing str...
research
09/08/2020

Trajectory Based Podcast Recommendation

Podcast recommendation is a growing area of research that presents new c...
research
06/22/2019

Collective Mobile Sequential Recommendation: A Recommender System for Multiple Taxicabs

Mobile sequential recommendation was originally designed to find a promi...

Please sign up or login with your details

Forgot password? Click here to reset