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Collaborative-Enhanced Prediction of Spending on Newly Downloaded Mobile Games under Consumption Uncertainty

Authors :
Sun, Peijie
Wang, Yifan
Zhang, Min
Wu, Chuhan
Fang, Yan
Zhu, Hong
Fang, Yuan
Wang, Meng
Publication Year :
2024

Abstract

With the surge in mobile gaming, accurately predicting user spending on newly downloaded games has become paramount for maximizing revenue. However, the inherently unpredictable nature of user behavior poses significant challenges in this endeavor. To address this, we propose a robust model training and evaluation framework aimed at standardizing spending data to mitigate label variance and extremes, ensuring stability in the modeling process. Within this framework, we introduce a collaborative-enhanced model designed to predict user game spending without relying on user IDs, thus ensuring user privacy and enabling seamless online training. Our model adopts a unique approach by separately representing user preferences and game features before merging them as input to the spending prediction module. Through rigorous experimentation, our approach demonstrates notable improvements over production models, achieving a remarkable \textbf{17.11}\% enhancement on offline data and an impressive \textbf{50.65}\% boost in an online A/B test. In summary, our contributions underscore the importance of stable model training frameworks and the efficacy of collaborative-enhanced models in predicting user spending behavior in mobile gaming.<br />Comment: 10 pages,6 figures, WWW 2024 Industry Track, with three accept, two weak accept scores

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2404.08301
Document Type :
Working Paper
Full Text :
https://doi.org/10.1145/3589335.3648297