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首页> 外文期刊>Pattern Recognition: The Journal of the Pattern Recognition Society >Adaptive linear dimensionality reduction for classification
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Adaptive linear dimensionality reduction for classification

机译:自适应线性降维用于分类

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摘要

Dimensionality reduction is the representation of high-dimensional patterns in a low-dimensional subspace based on a transformation which optimizes a specified criterion in the subspace, For pattern classification, the ideal criteria is the minimum achievable classification error (the Bayes error). Under strict assumptions of the pattern distribution, the Bayes error can be analytically expressed. We use this as a starting point to develop an adaptive algorithm that computes a linear transformation based on the minimization of a cost function that approximates the Bayes error in the subspace. Using kernel estimators we then relax the assumptions and extend the algorithm to more general pattern distributions. Our simulations with three synthetic and one real-data set indicate that the proposed algorithm substantially outperforms Fisher's Linear Discriminant. (C) 1999 Pattern Recognition Society. Published by Elsevier Science Ltd. All rights reserved. [References: 9]
机译:降维是基于变换的低维子空间中高维模式的表示,该变换优化了子空间中的指定标准。对于模式分类,理想条件是最小可实现的分类误差(贝叶斯误差)。在模式分布的严格假设下,可以解析地表达贝叶斯误差。我们以此为出发点,开发一种自适应算法,该算法基于近似子空间贝叶斯误差的代价函数的最小化来计算线性变换。然后,我们使用核估计器放宽假设,并将算法扩展到更通用的模式分布。我们用三个合成数据和一个真实数据集进行的仿真表明,该算法大大优于Fisher的线性判别式。 (C)1999模式识别学会。由Elsevier Science Ltd.出版。保留所有权利。 [参考:9]

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