Sensors and information in optimization under stochastic uncertainty

Sensors and information in optimization under stochastic uncertainty

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Article ID: iaor1994761
Country: United States
Volume: 18
Issue: 3
Start Page Number: 523
End Page Number: 547
Publication Date: Aug 1993
Journal: Mathematics of Operations Research
Authors: ,
Abstract:

The paper offers a framework for the analysis of information available in stochastic optimization problems. The setup proposed here applies to the situation where the decision maker can seek more information about the stochastics of the problem. The information collected in the inquiry only allows for a redefinition of the distribution of the stochastic elements, and the inquiry process itself may introduce new errors and uncertainties. The tool introduced by the authors is termed sensor. Compared with previous methods of analyzing information, e.g., σ-fields or signals, sensors allow for a quantitative analysis in the evaluation of the gain that may result in inquiring information. In this paper the authors work out the abstract model, and demonstrate it on a concrete problem, which is solved numerically.

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