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Optimization of the aggregation in AdaBoost algorithm by particle swarm optimization and its application in classification problems

机译:粒子群算法优化AdaBoost算法中的聚合及其在分类问题中的应用

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In this paper, particle swarm optimization (PSO) algorithm and Adaptive Boosting (AdaBoost) algorithm are combined to form a hybrid learning algorithm PSO-AB to boost the classification ability of support vector machine (SVM). This hybrid adopts SVM to classify the experimental data, uses AdaBoost algorithm to boost the classification results, and then uses PSO to optimize the boosted results. Experimental results of two clinical data show that AdaBoost algorithm could improve the accuracy of training set extremely, but for the testing set the result is not satisfactory. PSO-AB makes it possible to maximize the testing accuracy of AdaBoost algorithm on the premise of that the accuracy of training set is still exact, and will be a more effective method to classification problems compared to AdaBoost algorithm.
机译:本文将粒子群优化算法和自适应提升算法相结合,形成了混合学习算法PSO-AB,以提高支持向量机的分类能力。该混合器采用SVM对实验数据进行分类,使用AdaBoost算法对分类结果进行分类,然后使用PSO对分类结果进行优化。两项临床数据的实验结果表明,AdaBoost算法可以极大地提高训练集的准确性,但对于测试集,效果并不理想。 PSO-AB在训练集的准确性仍然准确的前提下,可以使AdaBoost算法的测试准确性最大化,并且与AdaBoost算法相比,它将是一种更有效的分类问题方法。

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