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LLMを用いた多主体戦略ゲーム研究:紛争と協調のメカニズム解明
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ポイント
- 大規模言語モデル(LLM)を実験対象とし、国際関係論の理論的メカニズムを再現するかを検証した。
- LLM実験は、スケーラブルで透明性・再現性の高い、理論的メカニズムを探求する新たな手法を提供する。
- 多極化は紛争を増加させ、有限期間は後退帰納的論理と一致する崩壊を、通信は信号伝達と互恵性により紛争を減少させた。
Abstract
This paper asks whether large language models (LLMs) can be used to study the strategic foundations of conflict and cooperation. I introduce LLMs as experimental subjects in a repeated security dilemma and evaluate whether they reproduce canonical mechanisms from international relations theory. The baseline game is extended along three theoretically central dimensions: multipolarity, finite time horizons, and the availability of communication. Across multiple models, the results exhibit systematic and consistent patterns: multipolarity increases the likelihood of conflict, finite horizons induce universal unraveling consistent with backward-induction logic, and communication reduces conflict by enabling signaling and reciprocity. Beyond observed behavior, the design provides access to agents' private reasoning and public messages, allowing choices to be linked to underlying strategic logics such as preemption, cooperation under uncertainty, and trust-building. The contribution is primarily methodological. LLM-based experiments offer a scalable, transparent, and replicable approach to probing theoretical mechanisms.
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