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Confidence Sharing: An Economic Strategy for Efficient Information Flows in Animal Groups

机译:信任共享:动物群中有效信息流的经济策略

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摘要

Social animals may share information to obtain a more complete and accurate picture of their surroundings. However, physical constraints on communication limit the flow of information between interacting individuals in a way that can cause an accumulation of errors and deteriorated collective behaviors. Here, we theoretically study a general model of information sharing within animal groups. We take an algorithmic perspective to identify efficient communication schemes that are, nevertheless, economic in terms of communication, memory and individual internal computation. We present a simple and natural algorithm in which each agent compresses all information it has gathered into a single parameter that represents its confidence in its behavior. Confidence is communicated between agents by means of active signaling. We motivate this model by novel and existing empirical evidences for confidence sharing in animal groups. We rigorously show that this algorithm competes extremely well with the best possible algorithm that operates without any computational constraints. We also show that this algorithm is minimal, in the sense that further reduction in communication may significantly reduce performances. Our proofs rely on the Cramér-Rao bound and on our definition of a Fisher Channel Capacity. We use these concepts to quantify information flows within the group which are then used to obtain lower bounds on collective performance. The abstract nature of our model makes it rigorously solvable and its conclusions highly general. Indeed, our results suggest confidence sharing as a central notion in the context of animal communication.
机译:社交动物可以共享信息以获得更完整和准确的周围环境图片。但是,对通讯的物理限制以可能导致错误累积和恶化的集体行为的方式限制了交互个体之间的信息流。在这里,我们从理论上研究动物群体内信息共享的一般模型。我们从算法的角度来确定有效的通信方案,但是这些方案在通信,内存和单个内部计算方面都是经济的。我们提出了一种简单自然的算法,其中每个代理将已收集的所有信息压缩为一个表示其行为可信度的参数。通过主动信令在代理之间传达信心。我们通过新颖的和现有的动物群中的信任共享经验证据来激励该模型。我们严格地表明,该算法与不受任何计算约束的最佳算法竞争非常好。从通信的进一步减少可能会显着降低性能的意义上说,我们还表明该算法是最小的。我们的证明依赖于Cramér-Rao界线以及我们对Fisher Channel Capacity的定义。我们使用这些概念来量化组内的信息流,然后将其用于获得集体绩效的下限。我们模型的抽象性质使其可以严格求解,其结论高度概括。确实,我们的研究结果表明,在动物交流中,信任共享是中心思想。

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