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Divisive Normalization: Justification and Effectiveness as Efficient Coding Transform

机译:除法归一化:作为有效编码转换的证明和有效性

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Divisive normalization (DN) has been advocated as an effective nonlinear efficient coding transform for natural sensory signals with applications in biology and engineering. In this work, we aim to establish a connection between the DN transform and the statistical properties of natural sensory signals. Our analysis is based on the use of multivariate t model to capture some important statistical properties of natural sensory signals. The multivariate t model justifies DN as an approximation to the transform that completely eliminates its statistical dependency. Furthermore, using the multivariate t model and measuring statistical dependency with multi-information, we can precisely quantify the statistical dependency that is reduced by the DN transform. We compare this with the actual performance of the DN transform in reducing statistical dependencies of natural sensory signals. Our theoretical analysis and quantitative evaluations confirm DN as an effective efficient coding transform for natural sensory signals. On the other hand, we also observe a previously unreported phenomenon that DN may increase statistical dependencies when the size of pooling is small.
机译:除数归一化(DN)被提倡作为一种有效的非线性高效编码变换,用于自然感觉信号,并在生物学和工程学中得到应用。在这项工作中,我们旨在在DN转换和自然感觉信号的统计特性之间建立联系。我们的分析是基于使用多元t模型来捕获自然感觉信号的一些重要统计特性。多元t模型将DN证明是对变换的近似,从而完全消除了其统计依赖性。此外,使用多元t模型并使用多信息测量统计依存关系,我们可以精确地量化由DN变换减少的统计依存关系。我们将其与DN变换在减少自然感觉信号的统计依赖性方面的实际性能进行比较。我们的理论分析和定量评估证实了DN是自然感觉信号的有效有效编码转换。另一方面,我们还观察到以前未报告的现象,即当池的大小较小时,DN可能会增加统计依赖性。

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