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Cascaded vector quantization by non-linear PCA network layers

机译:非线性PCA网络层的级联矢量量化

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The different mechanisms of principal component analysis (PCA) and vector quantization are combined in an architecture of one functional layer which implements vector quantization without using winner-take-all nets. After introducing cascaded vector quantization, the paper introduces a new network (the binary cascade network) which is composed of lateral inhibited neurons for PCA. They have bell-shaped activation functions which provide binary cascaded quantization stages. It is shown that this architecture is nearly optimal in terms of resource distribution.
机译:主成分分析(PCA)和矢量量化的不同机制被组合在一个功能层的体系结构中,该功能层实现了矢量量化而不使用赢家通吃的网络。在引入级联矢量量化之后,本文引入了一个新的网络(二进制级联网络),该网络由PCA的侧向抑制神经元组成。它们具有钟形激活功能,可提供二进制级联的量化级。结果表明,就资源分配而言,此体系结构几乎是最佳的。

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