BOOK-CHAPTER

Maximum Likelihood and Nonlinear Regression

John F. Monahan

Year: 2011 Cambridge University Press eBooks Pages: 219-256   Publisher: Cambridge University Press

Abstract

Maximum likelihood is generally regarded as the best all-purpose approach for statistical analysis. Outside of the most common statistical procedures, when the "optimal" or "usual" method is unknown, most statisticians follow the principle of maximum likelihood for parameter estimation and statistical hypothesis tests. Bayesian statistical methods also rely heavily on maximum likelihood. The main reason for this reliance is that following the principle of maximum likelihood usually leads to very reasonable and effective estimators and tests. From a theoretical viewpoint, under very mild conditions, maximum likelihood estimators (MLEs) are consistent, asymptotically unbiased, and efficient. Moreover, MLEs are invariant under reparameterizations or transformations: the MLE of a function of the parameter is the function of the MLE. From a practical viewpoint, the estimates and test statistics can be constructed without a great deal of analysis, and large-sample standard errors can be computed. Overall, experience has shown that maximum likelihood works well most of the time.

Keywords:
Likelihood function Mathematics Likelihood principle Maximum likelihood Statistics M-estimator Restricted maximum likelihood Estimator Maximum likelihood sequence estimation Marginal likelihood Statistical hypothesis testing Bayesian probability Likelihood-ratio test Quasi-maximum likelihood

Metrics

0
Cited By
0.00
FWCI (Field Weighted Citation Impact)
37
Refs
0.16
Citation Normalized Percentile
Is in top 1%
Is in top 10%

Topics

Advanced Statistical Methods and Models
Physical Sciences →  Mathematics →  Statistics and Probability
Statistical Methods and Inference
Physical Sciences →  Mathematics →  Statistics and Probability
Control Systems and Identification
Physical Sciences →  Engineering →  Control and Systems Engineering

Related Documents

BOOK-CHAPTER

Maximum Likelihood and Nonlinear Regression

John F. Monahan

Cambridge University Press eBooks Year: 2001 Pages: 199-234
JOURNAL ARTICLE

Maximum Likelihood and Quasi-Likelihood for Nonlinear Exponential Family Regression Models

David M. GayRoy E. Welsch

Journal:   Journal of the American Statistical Association Year: 1988 Vol: 83 (404)Pages: 990-998
JOURNAL ARTICLE

Maximum Likelihood and Quasi-Likelihood for Nonlinear Exponential Family Regression Models

David M. GayRoy E. Welsch

Journal:   Journal of the American Statistical Association Year: 1988 Vol: 83 (404)Pages: 990-990
JOURNAL ARTICLE

Generalized nonlinear percentile regression using asymmetric maximum likelihood estimation

Juhee LeeYoung Min Kim

Journal:   Communications for Statistical Applications and Methods Year: 2021 Vol: 28 (6)Pages: 627-641
© 2026 ScienceGate Book Chapters — All rights reserved.