Margin has played an important role on the design and analysis of learning algorithms during the past years, mostly working with the maximization of the minimum margin. Recent years have witnessed the increasing empirical studies on the optimization of margin distribution according to different statistics such as medium margin, average margin, margin variance, etc., whereas there is a relative paucity of theoretical understanding. In this work, we take one step on this direction by providing a new generalization error bound, which is heavily relevant to margin distribution by incorporating ingredients such as average margin and semi-variance, a new margin statistics for the characterization of margin distribution. Inspired by the theoretical findings, we propose the MSVMAv, an efficient approach to achieve better performance by optimizing margin distribution in terms of its empirical average margin and semi-variance. We finally conduct extensive experiments to show the superiority of the proposed MSVMAv approach.
翻译:在过去几年里,边际效应在学习算法的设计和分析中发挥了重要作用,主要是与最大限度地提高最低差值有关;近年来,根据中等差值、平均差值、差值等不同统计数据,对优化差值分配进行了越来越多的实证研究,但理论理解相对不足;在这项工作中,我们朝这个方向迈出了一步,提供了一个新的普遍化错误,它与差值分布密切相关,它包括了平均差值和半差值等要素,为差值分配定性提供了新的差值统计;在理论结论的启发下,我们提出了MSVMAv,这是通过优化平均差值分配和半差值,实现更好业绩的有效办法;我们最后进行了广泛的实验,以显示拟议的MSVMAv方法的优越性。