ShopSpell

Nonlinear Estimation [Paperback]

$41.99     $54.99    24% Off      (Free Shipping)
100 available
  • Category: Books (Mathematics)
  • Author:  Ross, Gavin J.S.
  • Author:  Ross, Gavin J.S.
  • ISBN-10:  146128001X
  • ISBN-10:  146128001X
  • ISBN-13:  9781461280019
  • ISBN-13:  9781461280019
  • Publisher:  Springer
  • Publisher:  Springer
  • Binding:  Paperback
  • Binding:  Paperback
  • Pub Date:  01-May-2011
  • Pub Date:  01-May-2011
  • SKU:  146128001X-11-SPRI
  • SKU:  146128001X-11-SPRI
  • Item ID: 100844467
  • List Price: $54.99
  • Seller: ShopSpell
  • Ships in: 5 business days
  • Transit time: Up to 5 business days
  • Delivery by: Jul 03 to Jul 05
  • Notes: Brand New Book. Order Now.
Non-Linear Estimation is a handbook for the practical statistician or modeller interested in fitting and interpreting non-linear models with the aid of a computer. A major theme of the book is the use of 'stable parameter systems'; these provide rapid convergence of optimization algorithms, more reliable dispersion matrices and confidence regions for parameters, and easier comparison of rival models. The book provides insights into why some models are difficult to fit, how to combine fits over different data sets, how to improve data collection to reduce prediction variance, and how to program particular models to handle a full range of data sets. The book combines an algebraic, a geometric and a computational approach, and is illustrated with practical examples. A final chapter shows how this approach is implemented in the author's Maximum Likelihood Program, MLP.Non-Linear Estimation is a handbook for the practical statistician or modeller interested in fitting and interpreting non-linear models with the aid of a computer. A major theme of the book is the use of 'stable parameter systems'; these provide rapid convergence of optimization algorithms, more reliable dispersion matrices and confidence regions for parameters, and easier comparison of rival models. The book provides insights into why some models are difficult to fit, how to combine fits over different data sets, how to improve data collection to reduce prediction variance, and how to program particular models to handle a full range of data sets. The book combines an algebraic, a geometric and a computational approach, and is illustrated with practical examples. A final chapter shows how this approach is implemented in the author's Maximum Likelihood Program, MLP.1 Models, Parameters, and Estimation.- 1.1. The Models To Be Considered.- 1.2. Maximum Likelihood Estimation.- 2 Transformations of Parameters.- 2.1. What Are Parameters?.- 2.2. A Priori Stable Parameters.- 2lĂ'
Add Review