Summary and Info
FeaturesExplains how to find exact and approximate solutions to systems of linear equationsShows how to use linear programming techniques, iterative methods, and specialized algorithms in various applicationsDiscusses the importance of speeding up convergencePresents the necessary mathematical tools and results to provide the proper foundationPrepares readers to understand how iterative optimization methods are used in inverse problemsIncludes exercises at the end of each chapterSolutions manual available upon qualifying course adoptionGive Your Students the Proper Groundwork for Future Studies in OptimizationA First Course in Optimization is designed for a one-semester course in optimization taken by advanced undergraduate and beginning graduate students in the mathematical sciences and engineering. It teaches students the basics of continuous optimization and helps them better understand the mathematics from previous courses.The book focuses on general problems and the underlying theory. It introduces all the necessary mathematical tools and results. The text covers the fundamental problems of constrained and unconstrained optimization as well as linear and convex programming. It also presents basic iterative solution algorithms (such as gradient methods and the Newton–Raphson algorithm and its variants) and more general iterative optimization methods.This text builds the foundation to understand continuous optimization. It prepares students to study advanced topics found in the author’s companion book, Iterative Optimization in Inverse Problems, including sequential unconstrained iterative optimization methods.