TL;DR
microPhantom is a new microRTS bot that improves decision-making under uncertainty using a novel combination of Constraint Programming and decision theory, demonstrating high resilience and improved win rates.
Contribution
The paper introduces a decision-making method combining Constraint Programming and decision theory for microRTS, enhancing performance under uncertainty and chaotic conditions.
Findings
Significant win rate improvement against top bots.
High resilience in chaotic environments.
Source code and toolkit made available for research.
Abstract
This competition paper presents microPhantom, a bot playing microRTS and participating in the 2020 microRTS AI competition. microPhantom is based on our previous bot POAdaptive which won the partially observable track of the 2018 and 2019 microRTS AI competitions. In this paper, we focus on decision-making under uncertainty, by tackling the Unit Production Problem with a method based on a combination of Constraint Programming and decision theory. We show that using our method to decide which units to train improves significantly the win rate against the second-best microRTS bot from the partially observable track. We also show that our method is resilient in chaotic environments, with a very small loss of efficiency only. To allow replicability and to facilitate further research, the source code of microPhantom is available, as well as the Constraint Programming toolkit it uses.
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