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Encoding Multisensory Information in Modular Neural Networks

机译:模块化神经网络中的多传感器信息编码

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The brain is capable of integrating information in multiple sensory channels in a Bayesian optimal way. Based on a decentralized network model inspired by electrophysiological recordings, we consider the structural pre-requisites for optimal multisensory integration. In this architecture, same-channel feedforward and recurrent links encode the unisensory likelihoods, whereas reciprocal couplings connecting the different modules are shaped by the correlation in the joint prior probabilities. Moreover, the statistical relationship between the difference in the optimal network structures and the difference in the priors and the likelihoods clearly shows that the network can encode multisensory information in a distributed manner. Our results generate testable predictions for future experiments and are likely to be applicable to other artificial systems.
机译:大脑能够以贝叶斯最佳方式在多个感觉通道中整合信息。基于受电生理记录启发的分散网络模型,我们考虑了最佳多传感器整合的结构先决条件。在这种体系结构中,同通道前馈和递归链接对单感可能性进行编码,而连接不同模块的互惠耦合则由联合先验概率中的相关性决定。此外,最佳网络结构的差异与先验差异和可能性之间的统计关系清楚地表明,网络可以以分布式方式编码多感官信息。我们的结果可以为未来的实验提供可测试的预测,并且很可能适用于其他人工系统。

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