SMC samplers for Bayesian optimal nonlinear design
Experimental design is a fundamental problem in science. It arises in the planning of medical trials, sensor network deployment and control as well as in costly data gathering in physics, chemistry and biology. Bayesian decision theory provides a principled way of treating this problem, but leads to...
Main Authors: | Kueck, H, de Freitas, N, Doucet, A, IEEE |
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Format: | Conference item |
Published: |
2006
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