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Robustness and complexity co-constructed in multimodal signalling networks

机译:多模态信令网络中共同构建的鲁棒性和复杂性

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摘要

In animal communication, signals are frequently emitted using different channels (e.g. frequencies in a vocalization) and different modalities (e.g. gestures can accompany vocalizations). We explore two explanations that have been provided for multimodality: (i) selection for high information transfer through dedicated channels and (ii) increasing fault tolerance or robustness through multichannel signals. Robustness relates to an accurate decoding of a signal when parts of a signal are occluded. We show analytically in simple feed-forward neural networks that while a multichannel signal can solve the robustness problem, a multimodal signal does so more effectively because it can maximize the contribution made by each channel while minimizing the effects of exclusion. Multimodality refers to sets of channels where within each set information is highly correlated. We show that the robustness property ensures correlations among channels producing complex, associative networks as a by-product. We refer to this as the principle of robust overdesign. We discuss the biological implications of this for the evolution of combinatorial signalling systems; in particular, how robustness promotes enough redundancy to allow for a subsequent specialization of redundant components into novel signals.
机译:在动物交流中,经常使用不同的通道(例如发声中的频率)和不同的方式(例如手势可以伴随发声)发出信号。我们探索为多模式提供的两种解释:(i)通过专用通道进行高信息传递的选择,以及(ii)通过多通道信号提高容错性或鲁棒性。稳健性涉及当信号的一部分被遮挡时信号的准确解码。我们在简单的前馈神经网络中进行分析显示,尽管多通道信号可以解决鲁棒性问题,但多模态信号却可以更有效地执行此操作,因为它可以最大化每个通道的贡献,同时最大程度地减少排斥的影响。多模态是指在每个集合信息中高度相关的信道集合。我们表明,鲁棒性可确保产生副产品复杂,关联网络的渠道之间的相关性。我们将此称为健壮的过度设计原则。我们讨论了这对于组合信号系统进化的生物学意义。特别地,鲁棒性如何促进足够的冗余度,以允许随后将冗余分量特化为新颖的信号。

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