Making use of predictions is a crucial, but under-explored, area of online algorithms. This paper studies a class of on-line optimization problems where we have external noisy predictions available. We propose a stochastic prediction error model that generalizes prior models in the learning and stochastic control communities, incorporates correlation among prediction errors, and captures the fact that predictions improve as time passes. We prove that achieving sublinear regret and constant competitive ratio for online algorithms requires the use of an unbounded prediction window in adversarial settings, but that under more realistic stochastic prediction error models it is possible to use Averaging Fixed Horizon Control (AFHC) to simultaneo...
Recently a line of work has shown the applicability of tools from online optimization for control, l...
We consider algorithms for "smoothed online convex optimization (SOCO)" problems. SOCO is a variant ...
We provide several applications of Optimistic Mirror Descent, an online learning algorithm based on ...
Making use of predictions is a crucial, but under-explored, area of online algorithms. This paper st...
Making use of predictions is a crucial, but under-explored, area of online algorithms. This paper st...
Abstract. Making use of predictions is a crucial, but under-explored, area of online algorithms. Thi...
Making use of predictions is a crucial, but under-explored, area of sequential decision problems wit...
We consider online convex optimization (OCO) problems with switching costs and noisy predictions. Wh...
We examine the problem of smoothed online optimization, where a decision maker must sequentially cho...
We study online optimization in a setting where an online learner seeks to optimize a per-round hitt...
Stochastic and adversarial data are two widely studied settings in online learning. But many optimiz...
We study the performance of an online learner under a framework in which it receives partial informa...
We consider algorithms for “smoothed online convex optimization” (SOCO) problems, which are a hybri...
We study the impact of predictions in online Linear Quadratic Regulator control with both stochastic...
We present methods for online linear optimization that take advantage of benign (as opposed to worst...
Recently a line of work has shown the applicability of tools from online optimization for control, l...
We consider algorithms for "smoothed online convex optimization (SOCO)" problems. SOCO is a variant ...
We provide several applications of Optimistic Mirror Descent, an online learning algorithm based on ...
Making use of predictions is a crucial, but under-explored, area of online algorithms. This paper st...
Making use of predictions is a crucial, but under-explored, area of online algorithms. This paper st...
Abstract. Making use of predictions is a crucial, but under-explored, area of online algorithms. Thi...
Making use of predictions is a crucial, but under-explored, area of sequential decision problems wit...
We consider online convex optimization (OCO) problems with switching costs and noisy predictions. Wh...
We examine the problem of smoothed online optimization, where a decision maker must sequentially cho...
We study online optimization in a setting where an online learner seeks to optimize a per-round hitt...
Stochastic and adversarial data are two widely studied settings in online learning. But many optimiz...
We study the performance of an online learner under a framework in which it receives partial informa...
We consider algorithms for “smoothed online convex optimization” (SOCO) problems, which are a hybri...
We study the impact of predictions in online Linear Quadratic Regulator control with both stochastic...
We present methods for online linear optimization that take advantage of benign (as opposed to worst...
Recently a line of work has shown the applicability of tools from online optimization for control, l...
We consider algorithms for "smoothed online convex optimization (SOCO)" problems. SOCO is a variant ...
We provide several applications of Optimistic Mirror Descent, an online learning algorithm based on ...