Tianze Wang


2024

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Understanding Players as if They Are Talking to the Game in a Customized Language: A Pilot Study
Tianze Wang | Maryam Honarijahromi | Styliani Katsarou | Olga Mikheeva | Theodoros Panagiotakopoulos | Oleg Smirnov | Lele Cao | Sahar Asadi
Proceedings of the 1st Workshop on Customizable NLP: Progress and Challenges in Customizing NLP for a Domain, Application, Group, or Individual (CustomNLP4U)

This pilot study explores the application of language models (LMs) to model game event sequences, treating them as a customized natural language. We investigate a popular mobile game, transforming raw event data into textual sequences and pretraining a Longformer model on this data. Our approach captures the rich and nuanced interactions within game sessions, effectively identifying meaningful player segments. The results demonstrate the potential of self-supervised LMs in enhancing game design and personalization without relying on ground-truth labels.