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AI solutions for drafting in Magic: the Gathering

Authors :
Ward, Henry N.
Brooks, Daniel J.
Troha, Dan
Mills, Bobby
Khakhalin, Arseny S.
Source :
2021 IEEE Conference on Games (CoG).
Publication Year :
2021
Publisher :
IEEE, 2021.

Abstract

Drafting in Magic the Gathering is a sub-game within a larger trading card game, where several players progressively build decks by picking cards from a common pool. Drafting poses an interesting problem for game and AI research due to its large search space, mechanical complexity, multiplayer nature, and hidden information. Despite this, drafting remains understudied, in part due to a lack of high-quality, public datasets. To rectify this problem, we present a dataset of over 100,000 simulated, anonymized human drafts collected from Draftsim.com. We also propose four diverse strategies for drafting agents, including a primitive heuristic agent, an expert-tuned complex heuristic agent, a Naive Bayes agent, and a deep neural network agent. We benchmark their ability to emulate human drafting, and show that the deep neural network agent outperforms other agents, while the Naive Bayes and expert-tuned agents outperform simple heuristics. We analyze the accuracy of AI agents across the timeline of a draft, and describe unique strengths and weaknesses for each approach. This work helps to identify next steps in the creation of humanlike drafting agents, and can serve as a benchmark for the next generation of drafting bots.

Details

Database :
OpenAIRE
Journal :
2021 IEEE Conference on Games (CoG)
Accession number :
edsair.doi.dedup.....c5c6c8a956ef0cd830e4bc2b743eba3a
Full Text :
https://doi.org/10.1109/cog52621.2021.9619100