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首页> 外文期刊>The Royal Society Proceedings B: Biological Sciences >Neural networks predict response biases of female tungara frogs.
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Neural networks predict response biases of female tungara frogs.

机译:神经网络预测雌性野蛙的反应偏见。

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Artificial neural networks have become useful tools for probing the origins of perceptual biases in the absence of explicit information on underlying neuronal substrates. Preceding studies have shown that neural networks selected to recognize or discriminate simple patterns may possess emergent biases toward pattern size of symmetry--preferences often exhibited by real females--and have investigated how these biases shape signal evolution. We asked whether simple neural networks could evolve to respond to an actual mate recognition signal, the call of the tungara frog, Physalaemus pustulosus. We found that not only were networks capable of recognizing the call of the tungara frog, but that they made remarkably accurate quantitative predictions about how well females generalized to many novel calls, and that these predictions were stable over several architectures. The data suggest that the degree to which P. pustulosus females respond to a call may often be an incidental by-product of a sensory system selected simply for species recognition.
机译:人工神经网络已成为有用的工具,可在基础神经元底物上没有明确信息的情况下探查感知偏差的起源。先前的研究表明,被选择用来识别或区分简单模式的神经网络可能会对对称模式的大小产生偏见-真实女性通常会表现出这种偏爱-并且已经研究了这些偏见如何影响信号的进化。我们询问了简单的神经网络是否可以进化来响应实际的配偶识别信号,即通古拉青蛙的名字Physalaemus pustulosus。我们发现,网络不仅能够识别通古拉青蛙的叫声,而且它们对雌性对许多新型叫声的泛化程度做出了非常准确的定量预测,并且这些预测在几种体系结构中都是稳定的。数据表明,脓疱假单胞菌雌性对呼叫的响应程度通常可能是为物种识别而选择的感觉系统的偶然副产品。

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