OCDCLGMLOct 7, 2016

Stochastic Averaging for Constrained Optimization with Application to Online Resource Allocation

arXiv:1610.02143v251 citations
Originality Incremental advance
AI Analysis

This work addresses resource allocation challenges in stochastic networks, offering incremental improvements for applications requiring low delay and fast convergence.

The paper tackles the problem of fast and efficient resource allocation in stochastic networks by learning Lagrange multipliers through a novel online learning approach, achieving improved delay and convergence performance compared to existing schemes.

Existing approaches to resource allocation for nowadays stochastic networks are challenged to meet fast convergence and tolerable delay requirements. The present paper leverages online learning advances to facilitate stochastic resource allocation tasks. By recognizing the central role of Lagrange multipliers, the underlying constrained optimization problem is formulated as a machine learning task involving both training and operational modes, with the goal of learning the sought multipliers in a fast and efficient manner. To this end, an order-optimal offline learning approach is developed first for batch training, and it is then generalized to the online setting with a procedure termed learn-and-adapt. The novel resource allocation protocol permeates benefits of stochastic approximation and statistical learning to obtain low-complexity online updates with learning errors close to the statistical accuracy limits, while still preserving adaptation performance, which in the stochastic network optimization context guarantees queue stability. Analysis and simulated tests demonstrate that the proposed data-driven approach improves the delay and convergence performance of existing resource allocation schemes.

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