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Supervised Locally Linear Embedding With Probability-based Distance For Classification

机译:有监督的基于概率距离的局部线性嵌入用于分类

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摘要

We present a novel dimension reduction method for classification based on probability-based distance and the technique of locally linear embedding (LLE). Logistic Discrimination (LD) is adopted for estimating the probability distribution as well as for classification on the reduced data. Different from the supervised locally linear embedding (SLLE) that is only used for the dimension reduction of training data, our probability-based locally linear embedding (PLLE) can be applied on both training and testing data. Five microarray data sets in high-dimensional spaces, the IRIS data, and a real set of handwritten digits are experimented. The numerical results show the proposed methodology performs better, compared with the LD classifiers applied on the lower-dimensional embedding coordinates computed by LLE or SLLE.
机译:我们提出了一种新的基于维度的距离分类和局部线性嵌入(LLE)技术的降维方法。 Logistic鉴别(LD)用于估计概率分布以及对简化数据进行分类。与仅用于训练数据降维的监督局部线性嵌入(SLLE)有所不同,我们基于概率的局部线性嵌入(PLLE)可以应用于训练和测试数据。实验了高维空间中的五个微阵列数据集,IRIS数据和一组实际的手写数字。数值结果表明,与应用于LLE或SLLE计算的低维嵌入坐标的LD分类器相比,该方法具有更好的性能。

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