Modeling Individual Differences in Game Behavior Using HMM

Authors

  • Sara Bunian Northeastern University
  • Alessandro Canossa Ubisoft
  • Randy Colvin Northeastern University
  • Magy Seif El-Nasr Northeastern University

DOI:

https://doi.org/10.1609/aiide.v13i1.12942

Keywords:

Player Modeling, Hidden Markov Models, Player Behavior

Abstract

Player modeling is an important concept that has gained much attention in game research due to its utility in developing adaptive techniques to target better designs for engagement and retention. Previous work has explored modeling individual differences using machine learning algorithms performed on aggregated game actions. However, players’ individual differences may be better manifested through sequential patterns of the in-game player’s actions. While few works have explored sequential analysis of player data, none have explored the use of Hidden Markov Models (HMM) to model individual differences, which is the topic of this paper. In particular, we developed a modeling approach using data collected from players playing a Role-Playing Game (RPG). Our proposed approach is two fold: 1. We present a Hidden Markov Model (HMM) of player in-game behaviors to model individual differences, and 2. using the output of the HMM, we generate behavioral features used to classify real world players’ characteristics, including game expertise and the big five personality traits. Our results show predictive power for some of personality traits, such as game expertise and conscientiousness, but the most influential factor was game expertise.

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Published

2021-06-25

How to Cite

Bunian, S., Canossa, A., Colvin, R., & Seif El-Nasr, M. (2021). Modeling Individual Differences in Game Behavior Using HMM. Proceedings of the AAAI Conference on Artificial Intelligence and Interactive Digital Entertainment, 13(1), 158-164. https://doi.org/10.1609/aiide.v13i1.12942