Coopetition-Gym v1: A Formally Grounded Platform for Mixed-Motive Multi-Agent Reinforcement Learning under Strategic Coopetition
Vik Pant, Eric Yu

TL;DR
Coopetition-Gym v1 is a comprehensive benchmark platform for multi-agent reinforcement learning in mixed-motive strategic settings, featuring diverse environments, configurable rewards, and extensive baseline algorithms.
Contribution
It introduces the first platform combining continuous-action environments, parameterized rewards, validated case studies, and a large suite of reference algorithms for strategic coopetition research.
Findings
Reproduced outcomes of documented coopetitive relationships with over 80% accuracy.
Trained 16 algorithms across 20 environments, generating a large, publicly available dataset.
Demonstrated the platform's capability to facilitate systematic analysis of strategic multi-agent interactions.
Abstract
We present Coopetition-Gym v1, a benchmark platform for mixed-motive multi-agent reinforcement learning under strategic coopetition. The platform comprises twenty environments organized into four mechanism classes that correspond to four foundational technical reports: interdependence and complementarity (arXiv:2510.18802), trust and reputation dynamics (arXiv:2510.24909), collective action and loyalty (arXiv:2601.16237), and sequential interaction and reciprocity (arXiv:2604.01240). Each environment carries a closed-form payoff structure and a calibrated interdependence matrix derived from the corresponding report. Every environment exposes a parameterized reward layer configurable across three structurally distinct modes (private, integrated, cooperative). This separation of payoff from reward enables reward-type ablation, the platform's principal methodological apparatus. Four of…
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