A Semi-supervised Dimension Reduction Method Using Ensemble Approach

C. Park
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Abstract

While LDA is a supervised dimension reduction method which finds projective directions to maximize separability between classes, the performance of LDA is severely degraded when the number of labeled data is small. Recently semi-supervised dimension reduction methods have been proposed which utilize abundant unlabeled data and overcome the shortage of labeled data. However, matrix computation usually used in statistical dimension reduction methods becomes hindrance to make the utilization of a large number of unlabeled data difficult, and moreover too much information from unlabeled data may not so helpful compared to the increase of its processing time. In order to solve these problems, we propose an ensemble approach for semi-supervised dimension reduction. Extensive experimental results in text classification demonstrates the effectiveness of the proposed method.
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基于集成方法的半监督降维方法
虽然LDA是一种寻找投影方向以最大化类间可分离性的监督降维方法,但当标记数据数量较少时,LDA的性能会严重下降。近年来提出的半监督降维方法利用了大量的未标记数据,克服了标记数据的不足。然而,统计降维方法中常用的矩阵计算成为阻碍,使得大量未标记数据的利用变得困难,而且来自未标记数据的过多信息与处理时间的增加相比可能没有太大的帮助。为了解决这些问题,我们提出了一种半监督降维的集成方法。大量的文本分类实验结果证明了该方法的有效性。
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