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Dependency Reduction with Divisive Normalization:Justification and Effectiveness

机译:划分归一化的依赖减少:合理性和有效性

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摘要

Efficient coding transforms that reduce or remove statistical dependencies in natural sensory signals are important for both biology and engineering. In recent years, divisive normalization (DN) has been advocated as a simple and effective nonlinear efficient coding transform. In this work, we first elaborate on the theoretical justification for DN as an efficient coding transform. Specifically, we use the multivariate t model to represent several important statistical properties of natural sensory signals and show that DN approximates the optimal transforms that eliminate statistical dependencies in the multivariate t model. Second, we show that several forms of DN used in the literature are equivalent in their effects as efficient coding transforms. Third, we provide a quantitative evaluation of the overall dependency reduction performance of DN for both the multivariate t models and natural sensory signals. Finally, we find that statistical dependencies in the multivariate t model and natural sensory signals are increased by the DN transform with low-input dimensions. This implies that for DN to be an effective efficient coding transform, it has to pool over a sufficiently large number of inputs.
机译:减少或消除自然感觉信号中的统计依赖性的有效编码转换对于生物学和工程学都是重要的。近年来,除数归一化(DN)被提倡为一种简单有效的非线性高效编码变换。在这项工作中,我们首先详细说明将DN作为有效编码转换的理论依据。具体来说,我们使用多元t模型来表示自然感觉信号的几个重要统计属性,并表明DN逼近了消除多元t模型中统计依赖性的最佳变换。其次,我们证明了文献中使用的DN的几种形式在效果上等同于有效的编码转换。第三,我们对多变量t模型和自然感官信号的DN总体依赖性降低性能进行了定量评估。最后,我们发现低输入维度的DN变换增加了多元t模型和自然感觉信号中的统计依赖性。这意味着,要使DN成为有效的有效编码转换,就必须合并足够多的输入。

著录项

  • 来源
    《Neural computation》 |2011年第11期|p.2942-2973|共32页
  • 作者

    Siwei Lyu;

  • 作者单位

    Computer Science Department, University at Albany, State University of New York,Albany, NY 12122, U.S.A.;

  • 收录信息 美国《科学引文索引》(SCI);美国《化学文摘》(CA);
  • 原文格式 PDF
  • 正文语种 eng
  • 中图分类
  • 关键词

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