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Optimal Margin Distribution Learning in Dynamic Environments

机译:动态环境中最佳边缘分布学习

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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 that instead of the minimal margin, the margin distribution is more crucial to the generalization performance. Although the superiority of this new learning paradigm has been verified under batch learning settings, it remains open for online learning settings, in particular, the dynamic environments in which the underlying decision function varies over time. In this paper, we propose the dynamic optimal margin distribution machine and theoretically analyze its regret. Although the obtained bound has the same order with the best known one, our method can significantly relax the restrictive assumption that the function variation should be given ahead of time, resulting in better applicability in practical scenarios. We also derive an excess risk bound for the special case when the underlying decision function only evolves several discrete changes rather than varying continuously. Extensive experiments on both synthetic and real data sets demonstrate the superiority of our method.
机译:最近,已经提倡了一个有前途的统计学习的研究方向,即,利润率分布对泛型性能更为关键的最佳保证金分布学习。虽然在批量学习设置下已经验证了这种新的学习范式的优势,但它仍然在线学习设置开放,特别是潜在决策功能随时间变化而变化的动态环境。在本文中,我们提出了动态最佳边缘分配机,理论上分析了其遗憾。虽然所获得的绑定具有与最着名的界定相同的顺序,但我们的方法可以显着放松限制假设功能变化应该提前给出,从而在实际情况下实现更好的适用性。当潜在的决策功能仅演变几个离散的变化而不是连续变化时,我们也会导出特殊情况的过度风险。对合成和实数据集的广泛实验证明了我们方法的优越性。

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