距离测量辅助粗糙集特征选择

Neil MacParthaláin, Q. Shen, Richard Jensen
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引用次数: 9

摘要

特征选择(FS)是一种降维技术。它的目的是选择数据集的原始特征的子集,这些特征富含最有用的信息。其好处包括改进数据可视化、透明度、减少培训和使用时间,并可能提高预测性能。许多基于粗糙集理论的方法在FS过程中采用了基于下逼近中包含的信息的依赖函数作为评估步骤,并取得了很大的成功。本文提出了一种利用低近似依赖值信息和距离度量信息同时考虑边界区域内目标的粗糙集FS技术。在粗糙集特征选择中使用这种度量可以产生比单独使用依赖函数获得的子集更小的子集大小。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Distance Measure Assisted Rough Set Feature Selection
Feature selection (FS) is a technique for dimensionality reduction. Its aims are to select a subset of the original features of a dataset which are rich in the most useful information. The benefits include improved data visualisation, transparency, a reduction in training and utilisation times and potentially, improved prediction performance. Many approaches based on rough set theory have employed the dependency function which is based on the information contained in the lower approximation as an evaluation step in the FS process with much success. This paper presents a novel rough set FS technique which uses the information of both the lower approximation dependency value and a distance metric for the consideration of objects in the boundary region. The use of this measure in rough set feature selection can result in smaller subset sizes than those obtained using the dependency function alone.
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