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Feature Selection for Text and Image Data Using Differential Evolution with SVM and Na?ve Bayes Classifiers

机译:使用SVM和NA贝雷斯分类器使用差分演进的文本和图像数据的功能选择

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Classification problems are increasing in various important applications such as text categorization, images, medical imaging diagnosis and bimolecular analysis etc. due to large amount of attribute set. Feature extraction methods in case of large dataset play an important role to reduce the irrelevant feature and thereby increases the performance of classifier algorithm. There exist various methods based on machine learning for text and image classification. These approaches are utilized for dimensionality reduction which aims to filter less informative and outlier data. Therefore, these approaches provide compact representation and computationally better tractable accuracy. At the same time, these methods can be challenging if the search space is doubled multiple time. To optimize such challenges, a hybrid approach is suggested in this paper. The proposed approach uses differential evolution (DE) for feature selection with na?ve bayes (NB) and support vector machine (SVM) classifiers to enhance the performance of selected classifier. The results are verified using text and image data which reflects improved accuracy compared with other conventional techniques. A 25 benchmark datasets (UCI) from different domains are considered to test the proposed algorithms.? A comparative study between proposed hybrid classification algorithms are presented in this work. Finally, the experimental result shows that the differential evolution with NB classifier outperforms and produces better estimation of probability terms. The proposed technique in terms of computational time is also feasible.
机译:由于大量属性集,分类问题在诸如文本分类,图像,医学成像诊断和生物分子分析等中的各种重要应用。在大型数据集的情况下,特征提取方法在播放重要作用以减少无关的特征,从而提高了分类器算法的性能。基于用于文本和图像分类的机器学习的各种方法。这些方法用于减少维度减少,旨在过滤更少的信息和异常值数据。因此,这些方法提供了紧凑的表示和计算上更好的易旧精度。与此同时,如果搜索空间增加了多次,这些方法可能是具有挑战性的。为了优化这些挑战,本文提出了一种混合方法。所提出的方法使用差分演进(de)与Na ve Bayes(NB)和支持向量机(SVM)分类器来增强所选分类器的性能。与其他传统技术相比,使用文本和图像数据验证结果,该文本和图像数据反映了改进的准确性。来自不同域的25个基准数据集(UCI)被认为是测试所提出的算法。?在这项工作中提出了提议的混合分类算法之间的比较研究。最后,实验结果表明,具有Nb分类器的差分演变优于概率和产生概率术语的估计。在计算时间方面,所提出的技术也是可行的。

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