Title of article
Capturing incomplete information in resource allocation problems through numerical patterns
Author/Authors
Arun Marar، نويسنده , , Warren B. Powell، نويسنده ,
Issue Information
روزنامه با شماره پیاپی سال 2009
Pages
9
From page
50
To page
58
Abstract
We look at the problem of optimizing complex operations with incomplete information where the missing information is revealed indirectly and imperfectly through historical decisions. Incomplete information is characterized by missing data elements governing operational behavior and unknown cost parameters. We assume some of this information may be indirectly captured in historical databases through flows characterizing resource movements. We can use these flows or other quantities derived from these flows as “numerical patterns” in our optimization model to reflect some of the incomplete information. We develop our methodology for representing information in resource allocation models using the concept of pattern regression. We use a popular goodness-of-fit measure known as the Cramer–Von Mises metric as the foundation of our approach. We then use a hybrid approach of solving a cost model with a term known as the “pattern metric” that minimizes the deviations of model decisions from observed quantities in a historical database. We present a novel iterative method to solve this problem. Results with real-world data from a large freight railroad are presented.
Keywords
Combinatorial optimization , Decision Support Systems , Knowledge-based systems , Large scale optimization , Logistics
Journal title
European Journal of Operational Research
Serial Year
2009
Journal title
European Journal of Operational Research
Record number
1313750
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