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エージェントベースの模倣ダイナミクスは効率的に圧縮された集団レベルの語彙を生み出す
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ポイント
- 情報ボトルネック(IB)の枠組みで、言語の効率的な圧縮を促す社会動態を解明する研究。
- 進化ゲーム理論とIBを統合し、不正確な戦略模倣が、情報理論的に最適な語彙進化を促すことを示す。
- ゲームの精度や状態の混同傾向が、語彙のトレードオフに影響を与え、効率的な圧縮を実現する。
Abstract
Natural languages have been argued to evolve under pressure to efficiently compress meanings into words by optimizing the Information Bottleneck (IB) complexity-accuracy tradeoff. However, the underlying social dynamics that could drive the optimization of a language's vocabulary towards efficiency remain largely unknown. In parallel, evolutionary game theory has been invoked to explain the emergence of language from rudimentary agent-level dynamics, but it has not yet been tested whether such an approach can lead to efficient compression in the IB sense. Here, we provide a unified model integrating evolutionary game theory with the IB framework and show how near-optimal compression can arise in a population through an independently motivated dynamic of imprecise strategy imitation in signaling games. We find that key parameters of the model -- namely, those that regulate precision in these games, as well as players' tendency to confuse similar states -- lead to constrained variation of the tradeoffs achieved by emergent vocabularies. Our results suggest that evolutionary game dynamics could potentially provide a mechanistic basis for the evolution of vocabularies with information-theoretically optimal and empirically attested properties.
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