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首页> 外文期刊>IEEE Transactions on Neural Networks >Bayes-optimality motivated linear and multilayered perceptron-based dimensionality reduction
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Bayes-optimality motivated linear and multilayered perceptron-based dimensionality reduction

机译:贝叶斯优化为基础的线性和多层基于感知器的降维

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摘要

Dimensionality reduction is the process of mapping high-dimension patterns to a lower dimension subspace. When done prior to classification, estimates obtained in the lower dimension subspace are more reliable. For some classifiers, there is also an improvement in performance due to the removal of the diluting effect of redundant information. A majority of the present approaches to dimensionality reduction are based on scatter matrices or other statistics of the data which do not directly correlate to classification accuracy. The optimality criteria of choice for the purposes of classification is the Bayes error. Usually however, Bayes error is difficult to express analytically. We propose an optimality criteria based on an approximation of the Bayes error and use it to formulate a linear and a nonlinear method of dimensionality reduction. The nonlinear method we propose, relies on using a multilayered perceptron which produces as output the lower dimensional representation. It thus differs from autoassociative like multilayered perceptrons which have been proposed and used for dimensionality reduction. Our results show that the nonlinear method is, as anticipated, superior to the linear method in that it can perform unfolding of a nonlinear manifold. In addition, the nonlinear method we propose provides substantially better lower dimension representation (for classification purposes) than Fisher's linear discriminant (FLD) and two other nonlinear methods of dimensionality reduction that are often used.
机译:降维是将高维模式映射到低维子空间的过程。在分类之前完成时,在较低维子空间中获得的估计值更加可靠。对于某些分类器,由于消除了冗余信息的稀释作用,因此性能也得到了改善。当前减少维数的大多数方法基于散乱矩阵或数据的其他统计信息,这些数据与分类精度不直接相关。用于分类的最佳选择标准是贝叶斯误差。但是,通常,贝叶斯误差很难用解析来表达。我们提出了一种基于贝叶斯误差近似的最优性准则,并用它来制定线性和非线性的降维方法。我们提出的非线性方法依赖于使用多层感知器,该感知器产生较低维度的表示作为输出。因此,它不同于已经提出并用于降维的自缔合像多层感知器。我们的结果表明,非线性方法比线性方法优越,因为它可以执行非线性流形的展开。另外,我们提出的非线性方法提供了更好的较低维表示(出于分类目的),这比费舍尔线性判别式(FLD)和经常使用的其他两种非线性降维方法更好。

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