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Optimal Margin Distribution Machine with Sparsity Inducing Penalty

机译:具有稀疏性惩罚的最优保证金分配机

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Recently a promising research direction of statistical learning has been advocated, i.e., the optimal margin distribution learning, with the central idea of optimizing the margin distribution. As the most representative approach of this new learning paradigm, the optimal margin distribution machine (ODM) considers maximizing the margin mean and minimizing the margin variance simultaneously. The standard ODM exploits the ℓ_2-norm penalty, which gives rise to a dense decision boundary. However, in some situations, the model with parsimonious representation is more preferred, due to the redundant noisy features or limited computing resources. In this paper, we propose the sparse optimal margin distribution machine (Sparse ODM), which aims to achieve better generalization performance with moderate model size. For optimization, we extends an efficient coordinate descent method to solve the final problem since the variables are decoupled. In each iteration, we propose a modified Newton method to solve the one-variable sub-problem. Experimental results on both synthetic and real data sets show the superiority of the proposed method.
机译:最近,已经提出了统计学习的有前途的研究方向,即最优边距分布学习,其中心思想是优化边距分布。作为这种新的学习范例的最具代表性的方法,最优边际分配机(ODM)考虑同时最大化边际均值和最小化边际方差。标准ODM利用ℓ_2范数惩罚,这会产生密集的决策边界。但是,在某些情况下,由于冗余的嘈杂特征或有限的计算资源,具有简约表示的模型是更可取的。在本文中,我们提出了一种稀疏的最佳边际分配机(Sparse ODM),其目的是在模型大小适中的情况下实现更好的泛化性能。为了优化,我们扩展了一种有效的坐标下降方法来解决最终问题,因为变量已解耦。在每次迭代中,我们提出一种改进的牛顿法来解决单变量子问题。综合和真实数据集的实验结果表明了该方法的优越性。

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