资源论文Approximate Supermodularity Bounds for Experimental Design

Approximate Supermodularity Bounds for Experimental Design

2020-02-10 | |  143 |   48 |   0

Abstract 

This work provides performance guarantees for the greedy solution of experimental design problems. In particular, it focuses on Aand 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 nonasymptotic 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 Aand E-optimal designs approach image.png-optimality. These results reconcile the empirical success of greedy experimental design with the non-supermodularity of the Aand E-optimality criteria.

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