Approximate Supermodularity Bounds for Experimental Design
Luiz Chamon, Alejandro Ribeiro
–Neural Information Processing Systems
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 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.
Neural Information Processing Systems
Oct-2-2024, 17:55:45 GMT
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