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首页> 外文期刊>Journal of The Institution of Engineers (India): Series B >Comparison of Genetic Algorithm, Particle Swarm Optimization and Biogeography-based Optimization for Feature Selection to Classify Clusters of Microcalcifications
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Comparison of Genetic Algorithm, Particle Swarm Optimization and Biogeography-based Optimization for Feature Selection to Classify Clusters of Microcalcifications

机译:遗传算法,粒子群算法和基于生物地理学的特征选择对微钙化聚类进行分类的比较

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摘要

Ductal carcinoma in situ (DCIS) is one type of breast cancer. Clusters of microcalcifications (MCCs) are symptoms of DCIS that are recognized by mammography. Selection of robust features vector is the process of selecting an optimal subset of features from a large number of available features in a given problem domain after the feature extraction and before any classification scheme. Feature selection reduces the feature space that improves the performance of classifier and decreases the computational burden imposed by using many features on classifier. Selection of an optimal subset of features from a large number of available features in a given problem domain is a difficult search problem. For n features, the total numbers of possible subsets of features are 2~n. Thus, selection of an optimal subset of features problem belongs to the category of NP-hard problems. In this paper, an attempt is made to find the optimal subset of MCCs features from all possible subsets of features using genetic algorithm (GA), particle swarm optimization (PSO) and biogeography-based optimization (BBO). For simulation, a total of 380 benign and malignant MCCs samples have been selected from mammogram images of DDSM database. A total of 50 features extracted from benign and malignant MCCs samples are used in this study. In these algorithms, fitness function is correct classification rate of classifier. Support vector machine is used as a classifier. From experimental results, it is also observed that the performance of PSO-based and BBO-based algorithms to select an optimal subset of features for classifying MCCs as benign or malignant is better as compared to GA-based algorithm.
机译:导管原位癌(DCIS)是一种乳腺癌。微钙化(MCC)簇是乳腺X线照相术可识别的DCIS症状。鲁棒特征向量的选择是在特征提取之后和任何分类方案之前,从给定问题域中的大量可用特征中选择特征的最佳子集的过程。特征选择减少了特征空间,从而改善了分类器的性能,并减轻了在分类器上使用许多特征而带来的计算负担。从给定问题域中的大量可用特征中选择特征的最佳子集是一个困难的搜索问题。对于n个特征,特征的可能子集的总数为2〜n。因此,特征问题的最佳子集的选择属于NP难问题的范畴。本文尝试使用遗传算法(GA),粒子群优化(PSO)和基于生物地理的优化(BBO)从所有可能的特征子集中找到MCC特征的最佳子集。为了进行仿真,从DDSM数据库的乳房X线照片中选择了总共380个良性和恶性MCC样本。本研究共使用了从良性和恶性MCC样本中提取的50个特征。在这些算法中,适应度函数是正确的分类器分类率。支持向量机被用作分类器。从实验结果还可以看出,与基于GA的算法相比,基于PSO和BBO的算法选择用于将MCC分类为良性或恶性的最佳特征子集的性能更好。

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