Modified Dominance-Based Soft Set Approach for Feature Selection

Jothi Ganesan, H. Inbarani, A. Azar, K. Fouad, S. Sabbeh
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引用次数: 4

Abstract

Big data analysis applications in the field of medical image processing have recently increased rapidly. Feature reduction plays a significant role in eliminating irrelevant features and creating a successful research model for Big Data applications. Fuzzy clustering is used for the segment of the nucleus. Various features, including shape, texture, and color-based features, have been used to address the segmented nucleus. The Modified Dominance Soft Set Feature Selection Algorithm (MDSSA) is intended in this paper to determine the most important features for the classification of leukaemia images. The results of the MDSSA are evaluated using the variance analysis called ANOVA. In the dataset extracted function, the MDSSA selected 17 percent of the features that were more promising than the existing reduction algorithms. The proposed approach also reduces the time needed for further analysis of Big Data. The experimental findings confirm that the performance of the proposed reduction approach is higher than other approaches.
基于优势度的特征选择改进软集方法
近年来,大数据分析在医学图像处理领域的应用迅速增加。特征约简在消除不相关特征,为大数据应用创建成功的研究模型方面发挥着重要作用。对核段采用模糊聚类。各种特征,包括形状、纹理和基于颜色的特征,已经被用来处理分割核。改进的优势软集特征选择算法(MDSSA)旨在确定白血病图像分类中最重要的特征。MDSSA的结果使用方差分析(ANOVA)进行评估。在数据集提取函数中,MDSSA选择了比现有约简算法更有希望的17%的特征。该方法还减少了进一步分析大数据所需的时间。实验结果证实了所提约简方法的性能优于其他方法。
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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