Entropy based unsupervised Feature Selection in digital mammogram image using rough set theory.

Q4 Pharmacology, Toxicology and Pharmaceutics
C Velayutham, K Thangavel
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引用次数: 10

Abstract

Feature Selection (FS) is a process, which attempts to select features, which are more informative. In the supervised FS methods various feature subsets are evaluated using an evaluation function or metric to select only those features, which are related to the decision classes of the data under consideration. However, for many data mining applications, decision class labels are often unknown or incomplete, thus indicating the significance of unsupervised FS. However, in unsupervised learning, decision class labels are not provided. The problem is that not all features are important. Some of the features may be redundant, and others may be irrelevant and noisy. In this paper, a novel unsupervised FS in mammogram image, using rough set-based entropy measures, is proposed. A typical mammogram image processing system generally consists of mammogram image acquisition, pre-processing of image, segmentation, features extracted from the segmented mammogram image. The proposed method is used to select features from data set, the method is compared with the existing rough set-based supervised FS methods and classification performance of both methods are recorded and demonstrates the efficiency of the method.

基于粗糙集理论的基于熵的数字乳房x线图像无监督特征选择。
特征选择(FS)是一个过程,它试图选择更有信息量的特征。在监督FS方法中,使用评价函数或度量来评估各种特征子集,以仅选择与所考虑的数据的决策类相关的特征。然而,对于许多数据挖掘应用,决策类标签往往是未知的或不完整的,从而表明了无监督FS的重要性。然而,在无监督学习中,不提供决策类标签。问题是并不是所有的功能都很重要。一些特征可能是冗余的,而另一些特征可能是无关的和嘈杂的。本文提出了一种新的基于粗糙集熵测度的乳腺x线图像无监督FS。典型的乳房x光图像处理系统一般包括乳房x光图像采集、图像预处理、图像分割、从分割后的乳房x光图像中提取特征。将提出的方法用于从数据集中选择特征,并与现有的基于粗糙集的有监督FS方法进行了比较,记录了两种方法的分类性能,验证了方法的有效性。
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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来源期刊
International Journal of Computational Biology and Drug Design
International Journal of Computational Biology and Drug Design Pharmacology, Toxicology and Pharmaceutics-Drug Discovery
CiteScore
1.00
自引率
0.00%
发文量
8
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