articleJournal of Machine Learning ResearchJun 1, 2008Closed access

Near-Optimal Sensor Placements in Gaussian Processes: Theory, Efficient Algorithms and Empirical Studies

Abstract

When monitoring spatial phenomena, which can often be modeled as Gaussian processes (GPs), choosing sensor locations is a fundamental task. There are several common strategies to address this task, for example, geometry or disk models, placing sensors at the points of highest entropy (variance) in the GP model, and A-, D-, or E-optimal design. In this paper, we tackle the combinatorial optimization problem of maximizing the mutual information between the chosen locations and the locations which are not selected. We prove that the problem of finding the configuration that maximizes mutual information is NP-complete. To address this issue, we describe a polynomial-time approximation that is within (1-1/e) of the…

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1,226
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FWCI
75.07
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100%
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Authors

3

Topics & keywords

Keywords
  • Mutual information
  • Computer science
  • Gaussian
  • Exploit
  • Mathematical optimization
  • Entropy (arrow of time)
  • Algorithm
  • Approximation algorithm
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