Informative Component Extraction with Robustness Consideration

Mei Chen, Yan Liu
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Abstract

Small sample size of training data might bring trouble as the bias of the estimated parameters for a pattern recognition system. Plug-in test statistics suffer from large estimation errors, often causing the performance to degrade as the measurement vector dimension increases. The informative component extraction method helps to solve this problem by throwing out some dimensions which have relative small distance to the nominal model in statistic sense. Preserving the discriminative information for identification increases the performance. Considering the distortion of the estimated distribution, we introduce the idea of robustness in the informative component extraction. A tolerance ball is applied in the selection of informative and robust components for each individual model (hypothesis). When dealing with multiple parameters model, the supreme of all tolerance balls is used. Informative component extraction with robustness consideration could be used in nonparametric density case simply with slight modification. We use two methods to extract informative component and the performance is examined with 4 different training data sets. The simulation results are compared and discussed with improved performance when considering the robustness.
考虑鲁棒性的信息成分提取
对于模式识别系统来说,训练数据样本量小可能会带来估计参数偏差等问题。插件测试统计数据存在较大的估计误差,通常会导致性能随着度量向量维度的增加而降低。信息分量提取方法通过在统计意义上剔除一些与标称模型距离较小的维度来解决这一问题。保留鉴别信息用于识别可以提高性能。考虑到估计分布的失真,我们在信息成分提取中引入了鲁棒性思想。在选择每个模型(假设)的信息性和鲁棒性成分时,采用容差球。在处理多参数模型时,采用所有公差球的极值。考虑鲁棒性的信息成分提取可以简单地应用于非参数密度情况。我们使用两种方法提取信息成分,并使用4个不同的训练数据集检验性能。对仿真结果进行了比较和讨论,在考虑鲁棒性的同时提高了性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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