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Regularized Sample Average Approximation for High-Dimensional Stochastic Optimization Under Low-Rankness

Optimization and Control 2019-07-22 v3

Abstract

This paper concerns a high-dimensional stochastic programming problem of minimizing a function of expected cost with a matrix argument. To this problem, one of the most widely applied solution paradigms is the sample average approximation (SAA), which uses the average cost over sampled scenarios as a surrogate to approximate the expected cost. Traditional SAA theories require the sample size to grow rapidly when the problem dimensionality increases. Indeed, for a problem of optimizing over a pp-by-pp matrix, the sample complexity of the SAA is given by O~(1)p2ϵ2polylog(1ϵ)\tilde O(1)\cdot \frac{p^2}{\epsilon^2}\cdot{polylog}(\frac{1}{\epsilon}) to achieve an ϵ\epsilon-suboptimality gap, for some poly-logarithmic function polylog(){polylog}(\,\cdot\,) and some quantity O~(1)\tilde O(1) independent of dimensionality pp and sample size nn. In contrast, this paper considers a regularized SAA (RSAA) with a low-rankness-inducing penalty. We demonstrate that the sample complexity of RSAA is O~(1)pϵ3polylog(p,1ϵ)\tilde O(1)\cdot \frac{p}{\epsilon^3}\cdot {polylog}(p,\,\frac{1}{\epsilon}), which is almost linear in pp and thus indicates a substantially lower dependence on dimensionality. Therefore, RSAA can be more advantageous than SAA especially for larger scale and higher dimensional problems. Due to the close correspondence between stochastic programming and statistical learning, our results also indicate that high-dimensional low-rank matrix recovery is possible generally beyond a linear model, even if the common assumption of restricted strong convexity is completely absent.

Keywords

Cite

@article{arxiv.1904.03453,
  title  = {Regularized Sample Average Approximation for High-Dimensional Stochastic Optimization Under Low-Rankness},
  author = {Hongcheng Liu and Charles Hernandez and Hung Yi Lee},
  journal= {arXiv preprint arXiv:1904.03453},
  year   = {2019}
}
R2 v1 2026-06-23T08:31:32.277Z