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Multi-Objective Genetic Algorithms for Sparse Least Square Support Vector Machines

机译:稀疏最小二乘支持向量机的多目标遗传算法

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This paper introduces a new approach to building sparse least square support vector machines (LSSVM) based on multi-objective genetic algorithms (GAs) for classification tasks. LSSVM classifiers are an alternative to SVM ones due to the training process of LSSVM classifiers only requires to solve a linear equation system instead of a quadratic programming optimization problem. However, the lost of sparseness in the Lagrange multipliers vector (i.e. the solution) is a significant drawback which comes out with theses classifiers. In order to overcome this lack of sparseness, we propose a multi-objective GA approach to leave a few support vectors out of the solution without affecting the classifier's accuracy and even improving it. The main idea is to leave out outliers, non-relevant patterns or those ones which can be corrupted with noise and thus prevent classifiers to achieve higher accuracies along with a reduced set of support vectors. We point out that the resulting sparse LSSVM classifiers achieve equivalent (in some cases, superior) performances than standard full-set LSSVM classifiers over real data sets. Differently from previous works, genetic algorithms are used in this work to obtain sparseness not to find out the optimal values of the LSSVM hyper-parameters.
机译:本文介绍了一种基于多目标遗传算法(GA)的用于分类任务的稀疏最小二乘支持向量机(LSSVM)的构建方法。由于LSSVM分类器的训练过程仅需要解决线性方程组而不是二次规划优化问题,因此LSSVM分类器是SVM分类器的替代方案。但是,拉格朗日乘数向量(即解)中稀疏性的丢失是这些分类器带来的一个显着缺点。为了克服这种稀疏性的不足,我们提出了一种多目标GA方法,将一些支持向量排除在解决方案之外,而不会影响分类器的准确性,甚至不会提高分类器的准确性。主要思想是排除异常值,不相关的模式或那些可能被噪声破坏的模式,从而防止分类器获得更高的准确性以及减少的支持向量集。我们指出,与真实数据集相比,所得的稀疏LSSVM分类器可实现比标准全套LSSVM分类器同等的性能(在某些情况下,优越的性能)。与以前的工作不同,在这项工作中使用遗传算法来获得稀疏性,而不是找出LSSVM超参数的最佳值。

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