AD Model Builder: using automatic differentiation for statistical inference of highly parameterized complex nonlinear models

Volume: 27, Issue: 2, Pages: 233 - 249
Published: Apr 1, 2012
Abstract
Many criteria for statistical parameter estimation, such as maximum likelihood, are formulated as a nonlinear optimization problem. Automatic Differentiation Model Builder (ADMB) is a programming framework based on automatic differentiation, aimed at highly nonlinear models with a large number of parameters. The benefits of using AD are computational efficiency and high numerical accuracy, both crucial in many practical problems. We describe the...
Paper Details
Title
AD Model Builder: using automatic differentiation for statistical inference of highly parameterized complex nonlinear models
Published Date
Apr 1, 2012
Volume
27
Issue
2
Pages
233 - 249
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