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Feasibility and Infeasibility in Optimization: Algorithms and Computational Methods

Feasibility and Infeasibility in Optimization: Algorithms and Computational Methods
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Field name Details
Dewey Class 519.6
Title Feasibility and Infeasibility in Optimization ([Ebook]) : Algorithms and Computational Methods / by John W. Chinneck.
Author Chinneck, John W.
Other name(s) SpringerLink (Online service)
Publication Boston, MA : Springer US , 2008.
Physical Details : online resource.
Series International Series in Operations Research and Management Science 0884-8289 ; ; 118
ISBN 9780387749327
Summary Note Constrained optimization models are core tools in business, science, government, and the military with applications including airline scheduling, control of petroleum refining operations, investment decisions, and many others. Constrained optimization models have grown immensely in scale and complexity in recent years as inexpensive computing power has become widely available. Models now frequently have many complicated interacting constraints, giving rise to a host of issues related to feasibility and infeasibility. For example, it is sometimes difficult to find any feasible point at all for a large model, or even to accurately determine if one exists, e.g. for nonlinear models. If the model is feasible, how quickly can a solution be found? If the model is infeasible, how can the cause be isolated and diagnosed? Can a repair to restore feasibility be carried out automatically? Researchers have developed numerous algorithms and computational methods in recent years to address such issues, with a number of surprising spin-off applications in fields such as artificial intelligence and computational biology. Over the same time period, related approaches and techniques relating to feasibility and infeasibility of constrained problems have arisen in the constraint programming community. Feasibility and Infeasibility in Optimization is a timely expository book that summarizes the state of the art in both classical and recent algorithms related to feasibility and infeasibility in optimization, with a focus on practical methods. All model forms are covered, including linear, nonlinear, and mixed-integer programs. Connections to related work in constraint programming are shown. Part I of the book addresses algorithms for seeking feasibility quickly, including new methods for the difficult cases of nonlinear and mixed-integer programs. Part II provides algorithms for analyzing infeasibility by isolating minimal infeasible (or maximum feasible) subsets of constraints, or by finding the best repair for the infeasibility. Infeasibility analysis algorithms have arisen primarily over the last two decades, and the book covers these in depth and detail. Part III describes applications in numerous areas outside of direct infeasibility analysis such as finding decision trees for data classification, analyzing protein folding, radiation treatment planning, automated test assembly, etc. A main goal of the book is to impart an understanding of the methods so that practitioners can make immediate use of existing algorithms and software, and so that researchers can extend the state of the art and find new applications. The book is of interest to researchers, students, and practitioners across the applied sciences who are working on optimization problems.:
Contents note Part I: Analyzing Infeasibility -- Isolating an Infeasibility -- Methods Specific to Linear Programming -- Methods Specific to Mixed Integer Programming -- Methods Specific to Nonlinear Programming -- Finding the Maximum Feasible Subset of Linear Constraints -- Finding the Best Fix for an Infeasible System -- Part II: Reaching Feasibility Quickly -- Linear Programming -- Mixed Integer Programming -- Nonlinear Programming -- Part III: Applications -- Analyzing Unboundedness in Linear Programs -- Analyzing the Viability of Network Models -- Analyzing Multiple-Objective Linear Programs -- Data Classification and Training Neural Networks -- Applications In Statistics -- Radiation Treatment Planning -- Backtracking in Constraint Programming -- Protein Folding -- Automatic Test Assembly -- General NP-Hard Problems.
System details note Online access to this digital book is restricted to subscription institutions through IP address (only for SISSA internal users).
Internet Site http://dx.doi.org/10.1007/978-0-387-74932-7
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