We consider algorithms for "smoothed online convex optimization (SOCO)" problems. SOCO is a variant of the class of "online convex optimization (OCO)" problems that is strongly related to the class of "metrical task systems", each of which have been studied extensively. Prior literature on these problems has focused on two performance metrics: regret and competitive ratio. There exist known algorithms with sublinear regret and known algorithms with constant competitive ratios; however no known algorithms achieve both. In this paper, we show that this is due to a fundamental incompatibility between regret and the competitive ratio -- no algorithm (deterministic or randomized) can achieve sublinear regret and a constant competitive ratio, eve...
We consider online convex optimizations in the bandit setting. The decision maker does not know the ...
In Chapter I, we present the online linear optimization problem and study Mirror Descent strategies....
We study an online mixed discrete and continuous optimization problem where a decision maker interac...
We consider algorithms for "smoothed online convex optimization (SOCO)" problems. SOCO is a variant ...
We consider algorithms for “smoothed online convex optimization” (SOCO) problems, which are a hybri...
We consider Online Convex Optimization (OCO) in the setting where the costs are m-strongly convex an...
We consider algorithms for 'smoothed online convex optimization' (SOCO) problems. SOCO is a variant ...
We study Smoothed Online Convex Optimization, a version of online convex optimization where the lear...
We consider a natural online optimization problem set on the real line. The state of the online algo...
We consider Online Convex Optimization (OCO) in the setting where the costs are mm-strongly convex a...
We study online optimization in a setting where an online learner seeks to optimize a per-round hitt...
We examine the problem of smoothed online optimization, where a decision maker must sequentially cho...
This paper presents competitive algorithms for a novel class of online optimization problems with me...
We study the performance of an online learner under a framework in which it receives partial informa...
Making use of predictions is a crucial, but under-explored, area of online algorithms. This paper st...
We consider online convex optimizations in the bandit setting. The decision maker does not know the ...
In Chapter I, we present the online linear optimization problem and study Mirror Descent strategies....
We study an online mixed discrete and continuous optimization problem where a decision maker interac...
We consider algorithms for "smoothed online convex optimization (SOCO)" problems. SOCO is a variant ...
We consider algorithms for “smoothed online convex optimization” (SOCO) problems, which are a hybri...
We consider Online Convex Optimization (OCO) in the setting where the costs are m-strongly convex an...
We consider algorithms for 'smoothed online convex optimization' (SOCO) problems. SOCO is a variant ...
We study Smoothed Online Convex Optimization, a version of online convex optimization where the lear...
We consider a natural online optimization problem set on the real line. The state of the online algo...
We consider Online Convex Optimization (OCO) in the setting where the costs are mm-strongly convex a...
We study online optimization in a setting where an online learner seeks to optimize a per-round hitt...
We examine the problem of smoothed online optimization, where a decision maker must sequentially cho...
This paper presents competitive algorithms for a novel class of online optimization problems with me...
We study the performance of an online learner under a framework in which it receives partial informa...
Making use of predictions is a crucial, but under-explored, area of online algorithms. This paper st...
We consider online convex optimizations in the bandit setting. The decision maker does not know the ...
In Chapter I, we present the online linear optimization problem and study Mirror Descent strategies....
We study an online mixed discrete and continuous optimization problem where a decision maker interac...