We introduce an online convex optimization algorithm which utilizes projected subgradient descent with optimal adaptive learning rates. Our method provides second-order minimax-optimal dynamic regret guarantee (i.e. dependent on the sum of squared subgradient norms) for a sequence of general convex functions, which may not have strong convexity, smoothness, exp-concavity or even Lipschitz-continuity. The regret guarantee is against any comparator decision sequence with bounded path variation (i.e. sum of the distances between successive decisions). We generate the lower bound of the worst-case second-order dynamic regret by incorporating actual subgradient norms. We show that this lower bound matches with our regret guarantee within a const...
Some of the most compelling applications of online convex optimization, includ-ing online prediction...
Some of the most compelling applications of online convex optimization, includ-ing online prediction...
Some of the most compelling applications of online convex optimization, includ-ing online prediction...
The regret bound of dynamic online learning algorithms is often expressed in terms of the variation ...
We study Online Convex Optimization in the unbounded setting where neither predictions nor gradient ...
We study the rates of growth of the regret in online convex optimization. First, we show that a simp...
We provide a new online learning algorithm that for the first time combines several disparate notio...
We study the rates of growth of the regret in online convex optimization. First, we show that a simp...
We aim to design universal algorithms for online convex optimization, which can handle multiple comm...
We study the rates of growth of the regret in online convex optimization. First, we show that a simp...
We study the rates of growth of the regret in online convex optimization. First, we show that a simp...
We study the rates of growth of the regret in online convex optimization. First, we show that a simp...
We aim to design universal algorithms for online convex optimization, which can handle multiple comm...
To efficiently solve high-dimensional problems with complicated constraints, projection-free online ...
We present new efficient \textit{projection-free} algorithms for online convex optimization (OCO), w...
Some of the most compelling applications of online convex optimization, includ-ing online prediction...
Some of the most compelling applications of online convex optimization, includ-ing online prediction...
Some of the most compelling applications of online convex optimization, includ-ing online prediction...
The regret bound of dynamic online learning algorithms is often expressed in terms of the variation ...
We study Online Convex Optimization in the unbounded setting where neither predictions nor gradient ...
We study the rates of growth of the regret in online convex optimization. First, we show that a simp...
We provide a new online learning algorithm that for the first time combines several disparate notio...
We study the rates of growth of the regret in online convex optimization. First, we show that a simp...
We aim to design universal algorithms for online convex optimization, which can handle multiple comm...
We study the rates of growth of the regret in online convex optimization. First, we show that a simp...
We study the rates of growth of the regret in online convex optimization. First, we show that a simp...
We study the rates of growth of the regret in online convex optimization. First, we show that a simp...
We aim to design universal algorithms for online convex optimization, which can handle multiple comm...
To efficiently solve high-dimensional problems with complicated constraints, projection-free online ...
We present new efficient \textit{projection-free} algorithms for online convex optimization (OCO), w...
Some of the most compelling applications of online convex optimization, includ-ing online prediction...
Some of the most compelling applications of online convex optimization, includ-ing online prediction...
Some of the most compelling applications of online convex optimization, includ-ing online prediction...