DocumentCode
2689848
Title
A Utile Function Optimizer
Author
Monson, Christopher K. ; Seppi, Kevin D. ; Carroll, James L.
Author_Institution
Google Inc., Pittsburgh
fYear
2007
fDate
25-28 Sept. 2007
Firstpage
1067
Lastpage
1074
Abstract
We recast the problem of unconstrained continuous evolutionary optimization as inference in a fixed graphical model. This approach allows us to address several pervasive issues in optimization, including the traditionally difficult problem of selecting an algorithm that is most appropriate for a given task. This is accomplished by placing a prior distribution over the expected class of functions, then employing inference and intuitively defined utilities and costs to transform the evolutionary optimization problem into one of active sampling. This allows us to pose an approach to optimization that is optimal for each expressly stated function class. The resulting solution methodology can optimally navigate exploration-exploitation tradeoffs using well-motivated decision theory, while providing the process with a natural stopping criterion. Finally, the model naturally accommodates the expression of dynamic and noisy functions, setting it apart from most existing algorithms that address these issues as an afterthought. We demonstrate the characteristics and advantages of this algorithm formally and with examples.
Keywords
decision theory; evolutionary computation; decision theory; evolutionary optimization; exploration-exploitation tradeoffs; natural stopping criterion; utile function optimizer; Bayesian methods; Computer science; Cost function; Decision theory; Evolutionary computation; Graphical models; Inference algorithms; Navigation; Sampling methods; Uncertainty;
fLanguage
English
Publisher
ieee
Conference_Titel
Evolutionary Computation, 2007. CEC 2007. IEEE Congress on
Conference_Location
Singapore
Print_ISBN
978-1-4244-1339-3
Electronic_ISBN
978-1-4244-1340-9
Type
conf
DOI
10.1109/CEC.2007.4424588
Filename
4424588
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