Adaptive Importance Sampling for Finite-Sum Optimization and Sampling
with Decreasing Step-Sizes
- URL: http://arxiv.org/abs/2103.12243v1
- Date: Tue, 23 Mar 2021 00:28:15 GMT
- Title: Adaptive Importance Sampling for Finite-Sum Optimization and Sampling
with Decreasing Step-Sizes
- Authors: Ayoub El Hanchi, David A. Stephens
- Abstract summary: We propose Avare, a simple and efficient algorithm for adaptive importance sampling for finite-sum optimization and sampling with decreasing step-sizes.
Under standard technical conditions, we show that Avare achieves $mathcalO(T2/3)$ and $mathcalO(T5/6)$ dynamic regret for SGD and SGLD respectively when run with $mathcalO(T5/6)$ step sizes.
- Score: 4.355567556995855
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: Reducing the variance of the gradient estimator is known to improve the
convergence rate of stochastic gradient-based optimization and sampling
algorithms. One way of achieving variance reduction is to design importance
sampling strategies. Recently, the problem of designing such schemes was
formulated as an online learning problem with bandit feedback, and algorithms
with sub-linear static regret were designed. In this work, we build on this
framework and propose Avare, a simple and efficient algorithm for adaptive
importance sampling for finite-sum optimization and sampling with decreasing
step-sizes. Under standard technical conditions, we show that Avare achieves
$\mathcal{O}(T^{2/3})$ and $\mathcal{O}(T^{5/6})$ dynamic regret for SGD and
SGLD respectively when run with $\mathcal{O}(1/t)$ step sizes. We achieve this
dynamic regret bound by leveraging our knowledge of the dynamics defined by the
algorithm, and combining ideas from online learning and variance-reduced
stochastic optimization. We validate empirically the performance of our
algorithm and identify settings in which it leads to significant improvements.
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