The subject of data fitting bridges many disciplines, especially those traditionally dealing with statistics like physics, mathematics, engineering, biology, economy, or psychology, but also more recent fields like computer vision. This book addresses itself to engineers and computer scientists or corresponding undergraduates who are interested in data fitting by the method of least-squares approximation, but have no or only limited pre-knowledge in this field. Experienced readers will find in it new ideas or might appreciate the book as a useful work of reference. Familiarity with basic linear algebra is helpful though not essential as the book includes a self-contained introduction and presents the method in a logical and accessible fashion. The primary goal of the text is to explain how data fitting via least squares works. The reader will find that the emphasis of the book is on practical matters, not on theoretical problems. In addition, the book enables the reader to design own software implementations with application-specific model functions based on the comprehensive discussion of several examples. The text is accompanied with working source code in ANSI-C for fitting with weighted least squares including outlier detection. Among others the book covers following topics * fitting of linear and nonlinear functions with one- or multi-dimensional variables * weighted least-squares * outlier detection * evaluation of the fitting results * different optimisation strategies * combined fitting of different model functions * total least-squares approach with multi-dimensional conditions
"Sinopsis" puede pertenecer a otra edición de este libro.
Suitable for beginners in this fieldFrom the Author:
New at least-squares approximation? Then give this textbook a try!
You will find the solution for data-fitting problems in the beginning of the book. Linear and nonlinear problems are treated jointly.
The more you want to learn, the deeper you have to dive into the book. You will find the theory behind the method of least squares as well as the details of modern numerical algorithms. Espacially the latter distinguishes "Data fitting and Uncertainty" from older texts.
All discussed techniques rest on an implementation in working source code (ANSI-C), which is provided with the book.
"Sobre este título" puede pertenecer a otra edición de este libro.
Descripción Vieweg and Teubner, 2010. Paperback. Estado de conservación: New. Nº de ref. de la librería INGM9783834810229
Descripción Vieweg and Teubner, 2010. Paperback. Estado de conservación: New. Never used!. Nº de ref. de la librería P113834810223
Descripción Vieweg and Teubner, 2010. Paperback. Estado de conservación: New. book. Nº de ref. de la librería M3834810223