Title of article
Branch and bound algorithms for maximizing expected improvement functions
Author/Authors
M.A. Franey، نويسنده , , Mark and Ranjan، نويسنده , , Pritam and Chipman، نويسنده , , Hugh، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2011
Pages
14
From page
42
To page
55
Abstract
Deterministic computer simulations are often used as replacement for complex physical experiments. Although less expensive than physical experimentation, computer codes can still be time-consuming to run. An effective strategy for exploring the response surface of the deterministic simulator is the use of an approximation to the computer code, such as a Gaussian process (GP) model, coupled with a sequential sampling strategy for choosing design points that can be used to build the GP model. The ultimate goal of such studies is often the estimation of specific features of interest of the simulator output, such as the maximum, minimum, or a level set (contour). Before approximating such features with the GP model, sufficient runs of the computer simulator must be completed.
tial designs with an expected improvement (EI) design criterion can yield good estimates of the features with minimal number of runs. The challenge is that the expected improvement function itself is often multimodal and difficult to maximize. We develop branch and bound algorithms for efficiently maximizing the EI function in specific problems, including the simultaneous estimation of a global maximum and minimum, and in the estimation of a contour. These branch and bound algorithms outperform other optimization strategies such as genetic algorithms, and can lead to significantly more accurate estimation of the features of interest.
Keywords
Computer experiments , Feature estimation , Sequential design
Journal title
Journal of Statistical Planning and Inference
Serial Year
2011
Journal title
Journal of Statistical Planning and Inference
Record number
2221055
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