The Random Quadratic Assignment Problem
Gerald Paul, Jia Shao, H. Eugene Stanley

TL;DR
This paper applies statistical mechanical methods to analyze the asymptotic behavior of the quadratic assignment problem when one matrix's entries are randomly distributed, revealing simple formulas for minimal and maximal costs.
Contribution
It introduces a novel statistical approach to the QAP with random matrices, deriving explicit asymptotic cost formulas based on distribution moments.
Findings
Derived formulas for minimal and maximal QAP costs
Results depend only on distribution mean and standard deviation
Symmetry observed between minimal and maximal costs
Abstract
Optimal assignment of classes to classrooms \cite{dickey}, design of DNA microarrays \cite{carvalho}, cross species gene analysis \cite{kolar}, creation of hospital layouts cite{elshafei}, and assignment of components to locations on circuit boards \cite{steinberg} are a few of the many problems which have been formulated as a quadratic assignment problem (QAP). Originally formulated in 1957, the QAP is one of the most difficult of all combinatorial optimization problems. Here, we use statistical mechanical methods to study the asymptotic behavior of problems in which the entries of at least one of the two matrices that specify the problem are chosen from a random distribution . Surprisingly, this case has not been studied before using statistical methods despite the fact that the QAP was first proposed over 50 years ago \cite{Koopmans}. We find simple forms for and…
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