Predicting Game Difficulty and Churn Without Players
August 29, 2020 Β· Declared Dead Β· π ACM SIGCHI Annual Symposium on Computer-Human Interaction in Play
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Authors
Shaghayegh Roohi, Asko Relas, Jari Takatalo, Henri Heiskanen, Perttu HΓ€mΓ€lΓ€inen
arXiv ID
2008.12937
Category
cs.AI: Artificial Intelligence
Citations
28
Venue
ACM SIGCHI Annual Symposium on Computer-Human Interaction in Play
Last Checked
4 months ago
Abstract
We propose a novel simulation model that is able to predict the per-level churn and pass rates of Angry Birds Dream Blast, a popular mobile free-to-play game. Our primary contribution is to combine AI gameplay using Deep Reinforcement Learning (DRL) with a simulation of how the player population evolves over the levels. The AI players predict level difficulty, which is used to drive a player population model with simulated skill, persistence, and boredom. This allows us to model, e.g., how less persistent and skilled players are more sensitive to high difficulty, and how such players churn early, which makes the player population and the relation between difficulty and churn evolve level by level. Our work demonstrates that player behavior predictions produced by DRL gameplay can be significantly improved by even a very simple population-level simulation of individual player differences, without requiring costly retraining of agents or collecting new DRL gameplay data for each simulated player.
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