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Using a Simple Neural Network to Delineate Some Principles of Distributed Economic Choice

机译:使用简单的神经网络描述分布式经济选择的一些原则

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摘要

The brain uses a mixture of distributed and modular organization to perform computations and generate appropriate actions. While the principles under which the brain might perform computations using modular systems have been more amenable to modeling, the principles by which the brain might make choices using distributed principles have not been explored. Our goal in this perspective is to delineate some of those distributed principles using a neural network method and use its results as a lens through which to reconsider some previously published neurophysiological data. To allow for direct comparison with our own data, we trained the neural network to perform binary risky choices. We find that value correlates are ubiquitous and are always accompanied by non-value information, including spatial information (i.e., no pure value signals). Evaluation, comparison, and selection were not distinct processes; indeed, value signals even in the earliest stages contributed directly, albeit weakly, to action selection. There was no place, other than at the level of action selection, at which dimensions were fully integrated. No units were specialized for specific offers; rather, all units encoded the values of both offers in an anti-correlated format, thus contributing to comparison. Individual network layers corresponded to stages in a continuous rotation from input to output space rather than to functionally distinct modules. While our network is likely to not be a direct reflection of brain processes, we propose that these principles should serve as hypotheses to be tested and evaluated for future studies.
机译:大脑使用分布式和模块化组织的混合物来执行计算并生成适当的动作。尽管大脑可以使用模块化系统执行计算的原理更适合于建模,但尚未探索大脑可以使用分布式原理进行选择的原理。从这个角度来看,我们的目标是使用神经网络方法描述一些分布式原理,并将其结果用作重新考虑一些以前发布的神经生理学数据的依据。为了与我们自己的数据进行直接比较,我们训练了神经网络以执行二元风险选择。我们发现价值相关性无处不在,并且总是伴随着非价值信息,包括空间信息(即没有纯价值信号)。评估,比较和选择不是不同的过程。实际上,即使在最早期,价值信号也对行动选择产生了直接的作用,尽管作用不大。除了行动选择方面,没有其他地方可以完全整合各个维度。没有单位专门针对特定报价;相反,所有单位都以反相关格式对两个出价的值进行了编码,从而有助于进行比较。各个网络层对应于从输入空间到输出空间连续旋转的阶段,而不是功能上不同的模块。虽然我们的网络可能不是大脑过程的直接反映,但我们建议这些原则应作为假设,供以后的研究检验和评估。

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