Delay-Tolerant Online Convex Optimization: Unified Analysis and Adaptive-Gradient Algorithms

Authors

  • Pooria Joulani University of Alberta
  • Andras Gyorgy Imperial College London
  • Csaba Szepesvari University of Alberta

DOI:

https://doi.org/10.1609/aaai.v30i1.10320

Keywords:

Machine Learning, Online Learning, Delayed Feedback, AdaGrad, Online Convex Optimization, FTRL, Mirror Descent

Abstract

We present a unified, black-box-style method for developing and analyzing online convex optimization (OCO) algorithms for full-information online learning in delayed-feedback environments. Our new, simplified analysis enables us to substantially improve upon previous work and to solve a number of open problems from the literature. Specifically, we develop and analyze asynchronous AdaGrad-style algorithms from the Follow-the-Regularized-Leader (FTRL) and Mirror-Descent family that, unlike previous works, can handle projections and adapt both to the gradients and the delays, without relying on either strong convexity or smoothness of the objective function, or data sparsity. Our unified framework builds on a natural reduction from delayed-feedback to standard (non-delayed) online learning. This reduction, together with recent unification results for OCO algorithms, allows us to analyze the regret of generic FTRL and Mirror-Descent algorithms in the delayed-feedback setting in a unified manner using standard proof techniques. In addition, the reduction is exact and can be used to obtain both upper and lower bounds on the regret in the delayed-feedback setting.

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Published

2016-02-21

How to Cite

Joulani, P., Gyorgy, A., & Szepesvari, C. (2016). Delay-Tolerant Online Convex Optimization: Unified Analysis and Adaptive-Gradient Algorithms. Proceedings of the AAAI Conference on Artificial Intelligence, 30(1). https://doi.org/10.1609/aaai.v30i1.10320

Issue

Section

Technical Papers: Machine Learning Methods