When monitoring spatial phenomena, which are often modeled as Gaussian Processes (GPs), choosing sensor locations is a fundamental task. A common strategy is to place sensors at the points of highest entropy (variance) in the GP model. We propose a mutual information criteria, and show that it produces better placements. Furthermore, we prove that 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 optimum by exploiting the submodularity of our criterion. This algorithm is extended to handle local structure in the GP, yielding significant speedups. We demonstrate the advantages of our approach on two real-world data sets.
Near-optimal sensor placements in Gaussian processes
Andreas Krause,A. Singh,Carlos Guestrin
Published 2005 in International Conference on Machine Learning
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- Publication year
2005
- Venue
International Conference on Machine Learning
- Publication date
2005-08-07
- Fields of study
Mathematics, Computer Science
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