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Online Coregularization for Multiview Semisupervised Learning

机译:多视图半监督学习的在线核心化

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摘要

We propose a novel online coregularization framework for multiview semisupervised learning based on the notion of duality in constrained optimization. Using the weak duality theorem, we reduce the online coregularization to the task of increasing the dual function. We demonstrate that the existing online coregularization algorithms in previous work can be viewed as an approximation of our dual ascending process using gradient ascent. New algorithms are derived based on the idea of ascending the dual function more aggressively. For practical purpose, we also propose two sparse approximation approaches for kernel representation to reduce the computational complexity. Experiments show that our derived online coregularization algorithms achieve risk and accuracy comparable to offline algorithms while consuming less time and memory. Specially, our online coregularization algorithms are able to deal with concept drift and maintain a much smaller error rate. This paper paves a way to the design and analysis of online coregularization algorithms.
机译:我们基于约束优化中的对偶性概念,提出了一种用于多视图半监督学习的新颖在线核心化框架。使用弱对偶定理,我们将在线核心化简化为增加对偶函数的任务。我们证明了先前工作中现有的在线归类算法可以看作是我们使用梯度上升的双重上升过程的近似值。基于更积极地提升对偶函数的思想,得出了新的算法。出于实际目的,我们还提出了两种用于内核表示的稀疏近似方法,以减少计算复杂度。实验表明,我们衍生的在线核心化算法可实现与离线算法相当的风险和准确性,同时消耗更少的时间和内存。特别是,我们的在线核心化算法能够处理概念漂移并保持较小的错误率。本文为在线核心化算法的设计和分析铺平了道路。

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