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Understanding the Agent's Brain: A Quantitative Approach

机译:了解特工的大脑:定量方法

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In recent years there have been many works describing successful autonomous agents controlled by Evolved Artificial Neural Networks. Understanding the structure and function of these neurocon-trollers is important both from an engineering perspective and from the standpoint of the theory of Neural Networks. Here, we introduce a novel algorithm, termed PPA (Performance Prediction Algorithm), that quantitatively measures the contributions of elements of a neural system to the tasks it performs. The algorithm identifies the elements which participate in a behavioral task, given data about performance decrease due to knocking out (lesioning) sets of elements. It also allows the accurate prediction of performance due to multi-element lesions. The effectiveness of the new algorithm is demonstrated in two recurrent neural networks with complex interactions among the elements. The generality and scalability of this method make it an important tool for the study and analysis of evolved neurocontrollers.
机译:近年来,已经有许多工作描述了由进化人工神经网络控制的成功自治代理。从工程学的角度以及从神经网络理论的角度来看,了解这些神经控制器的结构和功能都很重要。在这里,我们介绍了一种称为PPA(性能预测算法)的新颖算法,该算法可以定量地测量神经系统元素对其执行的任务的贡献。给定有关由于剔除(破坏)元素集而导致性能下降的数据,该算法会识别参与行为任务的元素。它还可以准确预测由于多元素病变引起的性能。新算法的有效性在两个元素之间具有复杂交互作用的递归神经网络中得到了证明。该方法的通用性和可扩展性使其成为研究和分析进化神经控制器的重要工具。

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