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情報伝達の制約が引き起こす集団的意思決定におけるエコーチェンバー現象とその回避策
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- 本研究では、個々のエージェントが集団的意思決定を行う際に、情報伝達の制約がエコーチェンバー現象を引き起こすメカニズムを解明した。
- この現象は、生物の集団的意思決定において、情報伝達の制約が精度を極端に不安定にし、環境変化への追従を妨げるため重要である。
- その結果、エコーチェンバー形成を防ぐ生物学的に妥当なメカニズムを特定し、パラメータ調整なしでロバストかつ高感度な集団的意思決定を可能にした。
Abstract
Collective decision-making arises from individual agents integrating their own personal observations with information obtained from social partners. In many biological systems that exhibit collective decision-making, the process by which social information is produced, transmitted, and used is subject to two key constraints. First, individuals often do not observe the internal states or personal observations of their neighbors; instead, they observe neighbors' discrete actions. Second, agents often have limited attention, such that, at any given moment, only a subset of social partners influences decisions. Using methods from nonlinear dynamics, we show that either of these constraints can cause collective accuracy to become extremely sensitive to the weight individuals place on the information they receive from others. This sensitivity arises from the spontaneous formation of echo chamber-like states in which individuals receive and transmit homogeneous social messages. Under such conditions, collectives become locked in self-reinforcing states that prevent them from tracking changes in the environment. We reveal the mathematical basis of this phenomenon, and show that it emerges not only in generic models of collective decision-making but also in models developed to describe specific biological systems, including neural circuits, eusocial insect colonies, and mobile animal groups. Finally, we identify biologically plausible mechanisms through which individuals may reduce the risk of echo chamber formation and achieve robust yet sensitive collective decisions without requiring fine-tuning parameters. Our results reveal how fundamental constraints on communication shape the dynamics and reliability of collective decisions across diverse biological systems.
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