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DEPSOSVM: variant of differential evolution based on PSO for image and text data classification

机译:DEPSOSVM:基于PSO进行图像和文本数据分类的差分演进变体

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Purpose - Feature selection is an important step for data pre-processing specially in the case of high dimensional data set. Performance of the data model is reduced if the model is trained with high dimensional data set, and it results in poor classification accuracy. Therefore, before training the model an important step to apply is the feature selection on the dataset to improve the performance and classification accuracy. Design/methodology/approach - A novel optimization approach that hybridizes binary particle swarm optimization (BPSO) and differential evolution (DE) for fine tuning of SVM classifier is presented. The name of the implemented classifier is given as DEPSOSVM. Findings - This approach is evaluated using 20 UCI benchmark text data classification data set. Further, the performance of the proposed technique is also evaluated on UCI benchmark image data set of cancer images. From the results, it can be observed that the proposed DEPSOSVM techniques have significant improvement in performance over other algorithms in the literature for feature selection. The proposed technique shows better classification accuracy as well. Originality/value - The proposed approach is different from the previous work, as in all the previous work DE/(rand/1) mutation strategy is used whereas in this study DE/(rand/2) is used and the mutation strategy with BPSO is updated. Another difference is on the crossover approach in our case as we have used a novel approach of comparing best particle with sigmoid function. The core contribution of this paper is to hybridize DE with BPSO combined with SVM classifier (DEPSOSVM) to handle the feature selection problems.
机译:目的 - 特征选择是在高维数据集的情况下专门进行数据预处理的一个重要步骤。如果使用高维数据集培训,则减少了数据模型的性能,并且它会导致差的分类精度。因此,在培训模型之前,应用一个重要步骤是数据集上的特征选择,以提高性能和分类准确性。介绍了设计/方法/方法 - 提出了一种新的优化方法,其杂交用于微调SVM分类器微调的二元粒子群优化(BPSO)和差分演进(DE)。实现的分类器的名称作为DEPSOSVM给出。调查结果 - 使用20个UCI基准文本数据分类数据集进行评估此方法。此外,还在癌症图像的UCI基准图像数据集上评估所提出的技术的性能。从结果中,可以观察到所提出的DEPSOSVM技术对特征选择的其他算法的性能显着改善。该技术也显示出更好的分类准确性。原创性/值 - 所提出的方法与先前的工作不同,如在所有先前的工作中,使用DE /(RAND / 1)突变策略,而在本研究中使用DE /(RAND / 2),并使用BPSO的突变策略已更新。在我们的情况下,另一个差异在我们的情况下,我们使用了一种与SIGMOID功能进行比较最佳粒子的新方法。本文的核心贡献是用BPSO与SVM分类器(DEPSOSVM)相结合杂交DE以处理特征选择问题。

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