International audienceWe propose a hierarchical version of dual averaging for zeroth-order online non-convex optimization-i.e., learning processes where, at each stage, the optimizer is facing an unknown non-convex loss function and only receives the incurred loss as feedback. The proposed class of policies relies on the construction of an online model that aggregates loss information as it arrives, and it consists of two principal components: (a) a regularizer adapted to the Fisher information metric (as opposed to the metric norm of the ambient space); and (b) a principled exploration of the problem's state space based on an adapted hierarchical schedule. This construction enables sharper control of the model's bias and variance, and allo...
34 pages, 15 figuresSpurred by the enthusiasm surrounding the "Big Data" paradigm, the mathematical ...
International audienceIn this paper, we formalise order-robust optimisation as an instance of online...
A number of learning problems can be cast as an Online Convex Game: on each round, a learner makes a...
International audienceWe propose a hierarchical version of dual averaging for zeroth-order online no...
International audienceWe consider the problem of online learning with non-convex losses. In terms of...
Motivated by applications in machine learning and operations research, we study regret minimization ...
We introduce an online convex optimization algorithm which utilizes projected subgradient descent wi...
We study Online Convex Optimization in the unbounded setting where neither predictions nor gradient ...
We study the regret of optimal strategies for online convex optimization games. Using von Neumann's ...
International audienceWe consider the problem of online optimization, where a learner chooses a deci...
We provide a new online learning algorithm that for the first time combines several disparate notio...
We develop a modified online mirror descent framework that is suitable for building adaptive and par...
We study the rates of growth of the regret in online convex optimization. First, we show that a simp...
This paper develops a methodology for regret minimization with stochastic first-order oracle feedbac...
Online gradient descent (OGD) is well known to be doubly optimal under strong convexity or monotonic...
34 pages, 15 figuresSpurred by the enthusiasm surrounding the "Big Data" paradigm, the mathematical ...
International audienceIn this paper, we formalise order-robust optimisation as an instance of online...
A number of learning problems can be cast as an Online Convex Game: on each round, a learner makes a...
International audienceWe propose a hierarchical version of dual averaging for zeroth-order online no...
International audienceWe consider the problem of online learning with non-convex losses. In terms of...
Motivated by applications in machine learning and operations research, we study regret minimization ...
We introduce an online convex optimization algorithm which utilizes projected subgradient descent wi...
We study Online Convex Optimization in the unbounded setting where neither predictions nor gradient ...
We study the regret of optimal strategies for online convex optimization games. Using von Neumann's ...
International audienceWe consider the problem of online optimization, where a learner chooses a deci...
We provide a new online learning algorithm that for the first time combines several disparate notio...
We develop a modified online mirror descent framework that is suitable for building adaptive and par...
We study the rates of growth of the regret in online convex optimization. First, we show that a simp...
This paper develops a methodology for regret minimization with stochastic first-order oracle feedbac...
Online gradient descent (OGD) is well known to be doubly optimal under strong convexity or monotonic...
34 pages, 15 figuresSpurred by the enthusiasm surrounding the "Big Data" paradigm, the mathematical ...
International audienceIn this paper, we formalise order-robust optimisation as an instance of online...
A number of learning problems can be cast as an Online Convex Game: on each round, a learner makes a...