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2005 | Book

Branch-and-Bound Applications in Combinatorial Data Analysis

Authors: Michael J. Brusco, Stephanie Stahl

Publisher: Springer New York

Book Series : Statistics and Computing

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About this book

This monograph focuses on the application of the solution strategy known as branch-and-bound to problems of combinatorial data analysis. Combinatorial data analysis problems typically require either the sel- tion of a subset of objects from a larger (master) set, the grouping of a collection of objects into mutually exclusive and exhaustive subsets, or the sequencing of objects. To obtain verifiably optimal solutions for this class of problems, we must evaluate (either explicitly or implicitly) all feasible solutions. Unfortunately, the number of feasible solutions for problems of combinatorial data analysis grows exponentially with pr- lem size. For this reason, the explicit enumeration and evaluation of all solutions is computationally infeasible for all but the smallest problems. The branch-and-bound solution method is one type of partial enume- tion solution strategy that enables some combinatorial data analysis pr- lems to be solved optimally without explicitly enumerating all feasible solutions. To understand the operation of a branch-and-bound algorithm, we d- tinguish complete solutions from partial solutions. A complete solution is one for which a feasible solution to the optimization problem has been produced (e. g. , all objects are assigned to a group, or all objects are - signed a sequence position). A partial solution is an incomplete solution (e. g. , some objects are not assigned to a group, or some objects are not assigned a sequence position).

Metadata
Title
Branch-and-Bound Applications in Combinatorial Data Analysis
Authors
Michael J. Brusco
Stephanie Stahl
Copyright Year
2005
Publisher
Springer New York
Electronic ISBN
978-0-387-28810-9
Print ISBN
978-0-387-25037-3
DOI
https://doi.org/10.1007/0-387-28810-4

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