ITLGMEJun 21, 2012

Smoothed Functional Algorithms for Stochastic Optimization using q-Gaussian Distributions

arXiv:1206.4832v69 citations
Originality Incremental advance
AI Analysis

This work addresses the parameter sensitivity of smoothed functional schemes in stochastic optimization, offering a generalized kernel approach that is incremental in nature.

The paper tackles the problem of improving stochastic optimization algorithms by introducing a new class of smoothing kernels based on q-Gaussian distributions for gradient estimation, and demonstrates performance through simulations on a queuing model.

Smoothed functional (SF) schemes for gradient estimation are known to be efficient in stochastic optimization algorithms, specially when the objective is to improve the performance of a stochastic system. However, the performance of these methods depends on several parameters, such as the choice of a suitable smoothing kernel. Different kernels have been studied in literature, which include Gaussian, Cauchy and uniform distributions among others. This paper studies a new class of kernels based on the q-Gaussian distribution, that has gained popularity in statistical physics over the last decade. Though the importance of this family of distributions is attributed to its ability to generalize the Gaussian distribution, we observe that this class encompasses almost all existing smoothing kernels. This motivates us to study SF schemes for gradient estimation using the q-Gaussian distribution. Using the derived gradient estimates, we propose two-timescale algorithms for optimization of a stochastic objective function in a constrained setting with projected gradient search approach. We prove the convergence of our algorithms to the set of stationary points of an associated ODE. We also demonstrate their performance numerically through simulations on a queuing model.

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