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Proportional Volume Sampling and Approximation Algorithms for A-Optimal Design

22 February 2018
Aleksandar Nikolov
Mohit Singh
U. Tantipongpipat
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Abstract

We study the optimal design problems where the goal is to choose a set of linear measurements to obtain the most accurate estimate of an unknown vector in ddd dimensions. We study the AAA-optimal design variant where the objective is to minimize the average variance of the error in the maximum likelihood estimate of the vector being measured. The problem also finds applications in sensor placement in wireless networks, sparse least squares regression, feature selection for kkk-means clustering, and matrix approximation. In this paper, we introduce proportional volume sampling to obtain improved approximation algorithms for AAA-optimal design. Our main result is to obtain improved approximation algorithms for the AAA-optimal design problem by introducing the proportional volume sampling algorithm. Our results nearly optimal bounds in the asymptotic regime when the number of measurements done, kkk, is significantly more than the dimension ddd. We also give first approximation algorithms when kkk is small including when k=dk=dk=d. The proportional volume-sampling algorithm also gives approximation algorithms for other optimal design objectives such as DDD-optimal design and generalized ratio objective matching or improving previous best known results. Interestingly, we show that a similar guarantee cannot be obtained for the EEE-optimal design problem. We also show that the AAA-optimal design problem is NP-hard to approximate within a fixed constant when k=dk=dk=d.

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