一种基于区域的高维数据降维方法

Dai Zhe, L. Jianhui
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引用次数: 0

摘要

降维是一项重要的属性处理工作。降维即属性约简就是在粗糙集上删除一些不需要的属性。目前,已有许多属性约简方法用于从大规模完整数据集中删除一些多余和不相关的属性。大多数属性约简算法的主要缺点是不能在降维过程中去除一些样本,从而降低了属性约简的计算效率。为了克服这一缺点,提出了一种改进的完整数据集属性约简算法。此外,对属性约简的分类性能进行了优化。首先,提出了一种精简决策系统,用于删除一些重复对象。然后给出了候选属性的显著性度量。在此基础上,提出了一种新的属性显著性度量下的属性约简方法。为了验证本文算法的有效性,通过与其他属性约简算法的对比,在UCI数据集上进行了实验。实验结果表明,该算法在选择属性约简方面取得了很好的改进。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
A positive region-based dimensionality reduction from high dimensional data
Dimensionality reduction is an important attribute process work. Dimensionality reduction, i.e, attribute reduction is to delete some uncesserary attributes at rough sets. At present, many attribute reduction methods have provided to delete some superfluous and irrelevant attributes from large-scale complete data sets. The main drawback of most attribute reduction algorithms is that they can not remove some examples in the process of dimensionality reduction, which degrades a computational efficiency of attribute reduction. To overcome this drawback, an improved attribute reduction algorithm for complete data sets is proposed. In addition, the classification performance of attribute reduction is optimized. At first, the compact decision system is presented to delete some repeated objects. Then the significance measure of attributes is provided for candidate attributes. In addition, the novel approach of attribute reduction under the proposed significance measure of attributes was developed. In order to verify the efficiency of our given algorithm, the experiments on UCI datasets are performed by comparing with other attribute reduction algorithms. The results on the experiments tell us that our given algorithm obtains promising improvement for selecting an attribute reduct.
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