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arxiv: 1810.10132 · v2 · pith:2WUHFGN4new · submitted 2018-10-23 · 💻 cs.LG · cs.DS· math.OC· stat.ML

Smoothed Online Optimization for Regression and Control

classification 💻 cs.LG cs.DSmath.OCstat.ML
keywords onlinecompetitivecontrolregressionconvexcostoptimizationsetting
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We consider Online Convex Optimization (OCO) in the setting where the costs are $m$-strongly convex and the online learner pays a switching cost for changing decisions between rounds. We show that the recently proposed Online Balanced Descent (OBD) algorithm is constant competitive in this setting, with competitive ratio $3 + O(1/m)$, irrespective of the ambient dimension. Additionally, we show that when the sequence of cost functions is $\epsilon$-smooth, OBD has near-optimal dynamic regret and maintains strong per-round accuracy. We demonstrate the generality of our approach by showing that the OBD framework can be used to construct competitive algorithms for a variety of online problems across learning and control, including online variants of ridge regression, logistic regression, maximum likelihood estimation, and LQR control.

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