投影免费动态在线学习

Deepak S. Kalhan, A. S. Bedi, Alec Koppel, K. Rajawat, Abhishek K. Gupta, Adrish Banerjee
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引用次数: 2

摘要

基于投影的算法在具有凸约束的在线凸优化中很受欢迎,但投影步骤导致了算法实际实现的瓶颈。为了避免这一瓶颈,我们提出了一种基于Frank-Wolfe的无投影方案:我们使用与梯度共线但保证可行的步骤来代替在线梯度步骤。我们根据动态后悔来建立性能,它量化了与每个时间段的最优相比的成本积累。具体来说,对于凸损失,我们建立了$\mathcal{O}\left({{T^{1/2}}} \right)$动态遗憾,直到非平稳度量。我们将算法所需的信息放宽到只有有噪声的梯度估计,即部分反馈,并推导出动态后悔界。对矩阵补全问题和视频背景分离的实验证明了该方法的良好性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Projection Free Dynamic Online Learning
Projection based algorithms are popular in the literature for online convex optimization with convex constraints and the projection step results in a bottleneck for the practical implementation of the algorithms. To avoid this bottleneck, we propose a projection-free scheme based on Frank-Wolfe: where instead of online gradient steps, we use steps that are collinear with the gradient but guaranteed to be feasible. We establish performance in terms of dynamic regret, which quantifies cost accumulation as compared with the optimal at each individual time slot. Specifically, for convex losses, we establish $\mathcal{O}\left( {{T^{1/2}}} \right)$ dynamic regret up to metrics of non-stationarity. We relax the algorithm’s required information to only noisy gradient estimates, i.e., partial feedback and derived the dynamic regret bounds. Experiments on matrix completion problem and background separation in video demonstrate favorable performance of the proposed scheme.
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