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From the Cover: Toward a unified theory of efficient predictive and sparse coding

机译:从封面开始:建立高效预测和稀疏编码的统一理论

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摘要

A central goal in theoretical neuroscience is to predict the response properties of sensory neurons from first principles. To this end, “efficient coding” posits that sensory neurons encode maximal information about their inputs given internal constraints. There exist, however, many variants of efficient coding (e.g., redundancy reduction, different formulations of predictive coding, robust coding, sparse coding, etc.), differing in their regimes of applicability, in the relevance of signals to be encoded, and in the choice of constraints. It is unclear how these types of efficient coding relate or what is expected when different coding objectives are combined. Here we present a unified framework that encompasses previously proposed efficient coding models and extends to unique regimes. We show that optimizing neural responses to encode predictive information can lead them to either correlate or decorrelate their inputs, depending on the stimulus statistics; in contrast, at low noise, efficiently encoding the past always predicts decorrelation. Later, we investigate coding of naturalistic movies and show that qualitatively different types of visual motion tuning and levels of response sparsity are predicted, depending on whether the objective is to recover the past or predict the future. Our approach promises a way to explain the observed diversity of sensory neural responses, as due to multiple functional goals and constraints fulfilled by different cell types and/or circuits.
机译:理论神经科学的中心目标是根据第一原理来预测感觉神经元的反应特性。为此,“有效编码”假定感觉神经元在给定内部约束的情况下编码有关其输入的最大信息。但是,存在许多有效编码的变体(例如,冗余减少,预测编码的不同表示形式,鲁棒编码,稀疏编码等),其适用范围,所编码信号的相关性以及选择约束。目前尚不清楚这些类型的有效编码是如何关联的,或者在组合不同的编码目标时会期望什么。在这里,我们提出了一个统一的框架,其中包含以前提出的有效编码模型,并扩展到独特的机制。我们表明,优化神经反应以编码预测信息可以导致它们关联或去相关它们的输入,具体取决于刺激统计数据;相反,在低噪声下,有效编码过去总是可以预测去相关。后来,我们研究了自然主义电影的编码,并表明,根据目标是恢复过去还是预测未来,可以预测出定性不同类型的视觉运动调整和响应稀疏度。我们的方法为解释观察到的感觉神经反应多样性提供了一种方法,这是由于多种功能目标和不同细胞类型和/或电路所实现的约束所致。

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