Approximate Supermodularity Bounds for Experimental Design

Abstract

This work provides performance guarantees for the greedy solution of experimental design problems. In particular, it focuses on A- and E-optimal designs, for which typical guarantees do not apply since the mean-square error and the maximum eigenvalue of the estimation error covariance matrix are not supermodular. To do so, it leverages the concept of approximate supermodularity to derive non-asymptotic worst-case suboptimality bounds for these greedy solutions. These bounds reveal that as the SNR of the experiments decreases, these cost functions behave increasingly as supermodular functions. As such, greedy A- and E-optimal designs approach (1-1/e)-optimality. These results reconcile the empirical success of greedy experimental design with the non-supermodularity of the A- and E-optimality criteria.

Cite

Text

Chamon and Ribeiro. "Approximate Supermodularity Bounds for Experimental Design." Neural Information Processing Systems, 2017.

Markdown

[Chamon and Ribeiro. "Approximate Supermodularity Bounds for Experimental Design." Neural Information Processing Systems, 2017.](https://mlanthology.org/neurips/2017/chamon2017neurips-approximate/)

BibTeX

@inproceedings{chamon2017neurips-approximate,
  title     = {{Approximate Supermodularity Bounds for Experimental Design}},
  author    = {Chamon, Luiz and Ribeiro, Alejandro},
  booktitle = {Neural Information Processing Systems},
  year      = {2017},
  pages     = {5403-5412},
  url       = {https://mlanthology.org/neurips/2017/chamon2017neurips-approximate/}
}