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Numerical Matrix Analysis

Numerical Matrix Analysis

Numerical Matrix Analysis

Linear Systems and Least Squares
Ilse Ipsen, North Carolina State University
November 2009
Paperback
9780898716764
NZD$153.95
inc GST
Paperback

    The purpose of this book is to promote understanding of two phenomena: sensitivity of linear systems and least squares problems, and numerical stability of algorithms. Sensitivity and stability are analyzed as mathematical properties, without reference to finite precision arithmetic. The material is presented at a basic level, emphasizing ideas and intuition, but in a mathematically rigorous fashion. The derivations are simple and elegant, and the results are easy to understand and interpret. The book is self-contained. It was written for students in all areas of mathematics, engineering, and the computational sciences, but can easily be used for self-study. This text differs from other numerical linear algebra texts by offering the following: a systematic development of numerical conditioning; a simplified concept of numerical stability in exact arithmetic; simple derivations; a high-level view of algorithms; and results for complex matrices.

    • The material is presented at a basic level, emphasising ideas and intuition
    • Each chapter offers simple exercises for use in the classroom and more challenging exercises for student practice
    • Written for advanced undergraduates and graduates in mathematics, engineering and computational science

    Product details

    November 2009
    Paperback
    9780898716764
    140 pages
    228 × 152 × 9 mm
    0.2kg
    This item is not supplied by Cambridge University Press in your region. Please contact Soc for Industrial & Applied Mathematics for availability.

    Table of Contents

    • Preface
    • Introduction
    • 1. Matrices
    • 2. Sensitivity, errors, and norms
    • 3. Linear systems
    • 4. Singular value decomposition
    • 5. Least square problems
    • 6. Subspaces
    • Index.