Optimizing Hearthstone Agents using an Evolutionary Algorithm
October 25, 2024 ยท Declared Dead ยท ๐ Knowledge-Based Systems
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Authors
Pablo Garcรญa-Sรกnchez, Alberto Tonda, Antonio J. Fernรกndez-Leiva, Carlos Cotta
arXiv ID
2410.19681
Category
cs.NE: Neural & Evolutionary
Citations
27
Venue
Knowledge-Based Systems
Last Checked
4 months ago
Abstract
Digital collectible card games are not only a growing part of the video game industry, but also an interesting research area for the field of computational intelligence. This game genre allows researchers to deal with hidden information, uncertainty and planning, among other aspects. This paper proposes the use of evolutionary algorithms (EAs) to develop agents who play a card game, Hearthstone, by optimizing a data-driven decision-making mechanism that takes into account all the elements currently in play. Agents feature self-learning by means of a competitive coevolutionary training approach, whereby no external sparring element defined by the user is required for the optimization process. One of the agents developed through the proposed approach was runner-up (best 6%) in an international Hearthstone Artificial Intelligence (AI) competition. Our proposal performed remarkably well, even when it faced state-of-the-art techniques that attempted to take into account future game states, such as Monte-Carlo Tree search. This outcome shows how evolutionary computation could represent a considerable advantage in developing AIs for collectible card games such as Hearthstone.
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