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A P-ADMM for sparse quadratic kernel-free least squares semi-supervised support vector machine

机译:稀疏二次无核最小二乘半监督支持向量机的P-ADMM

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In this paper, we propose a sparse quadratic kernel-free least squares semi-supervised support vector machine model by adding an L-1 norm regularization term to the objective function and using the least squares method, which results in a nonconvex and nonsmooth quadratic programming problem. For computational considerations, we use the smoothing technique and consensus technique. Then we adopt the proximal alternating direction method of multipliers (P-ADMM) to solve it, as well as propose a strategy of parameter selection. Then we not only derive the convergence analysis of algorithm, but also estimate the convergence rate as o(1/root k), where k is the number of iteration. This gives the best bound of P-ADMM known so far for nonconvex consensus problem. To demonstrate the efficiency of our model, we compare the proposed method with several state-of-the-art methods. The numerical results show that our model can achieve both better accuracy and sparsity. (C) 2018 Elsevier B.V. All rights reserved.
机译:在本文中,我们通过将L-1范数正则化项添加到目标函数并使用最小二乘法,提出了一种稀疏的二次无核最小二乘半监督支持向量机模型,从而得到了非凸且非光滑的二次规划问题。出于计算方面的考虑,我们使用平滑技术和共识技术。然后我们采用乘数的近端交替方向法(P-ADMM)进行求解,并提出了一种参数选择策略。然后,我们不仅可以得出算法的收敛性分析,而且可以将收敛速度估计为o(1 / root k),其中k是迭代次数。这给出了迄今为止针对非凸共识问题的P-ADMM的最佳界限。为了证明我们模型的效率,我们将提出的方法与几种最新方法进行了比较。数值结果表明,我们的模型可以达到更好的准确性和稀疏性。 (C)2018 Elsevier B.V.保留所有权利。

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