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Self-advising support vector machine

机译:自我支持向量机

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摘要

The Support Vector Machine (SVM) is one of the most popular machine learning algorithms for classification and regression. SVM displays outstanding performance when utilized in many applications. However, different approaches have been proposed in order to improve its performance in general and in special cases. This paper proposes a new method of improving SVM performance in general. This method can be applied to all the types of SVMs that have differing kernel types. The key aim of the proposed approach is to transfer more information from the training phase to the testing phase. This information is obtained from the misclassified data of the training phase, which is ignored in the classic SVM. Experimental results from eleven datasets from the real online resources show that this approach can improve the classification performances of C-SVM and v-SVM without adding any parameters to the learner algorithm. Statistical tests show significance in this improvement. The proposed method has been found to improve accuracies of C-SVM and v-SVM in more than 67% of the experiments in which 11% of these improvements are more than 5%. It must be noted that the highest improvement found with this method was 25%.
机译:支持向量机(SVM)是用于分类和回归的最受欢迎的机器学习算法之一。当在许多应用程序中使用SVM时,其表现出卓越的性能。但是,已经提出了不同的方法,以提高其在一般情况和特殊情况下的性能。本文提出了一种总体上提高SVM性能的新方法。该方法可以应用于具有不同内核类型的所有类型的SVM。提出的方法的主要目的是将更多信息从培训阶段转移到测试阶段。该信息是从训练阶段的错误分类数据中获得的,在传统的SVM中将忽略该信息。来自真实在线资源的11个数据集的实验结果表明,该方法可以提高C-SVM和v-SVM的分类性能,而无需在学习器算法中添加任何参数。统计测试表明了这种改进的重要性。在超过67%的实验中,发现所提出的方法可以提高C-SVM和v-SVM的准确性,其中11%的这些改进超过5%。必须注意的是,用这种方法发现的最高改进是25%。

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