In this volume the underlying logic and practice of maximum likelihood (ML) estimation is made clear by providing a general modeling framework that utilizes the tools of ML methods. This framework offers readers a flexibl...

Buy Now From Amazon

Product Review

In this volume the underlying logic and practice of maximum likelihood (ML) estimation is made clear by providing a general modeling framework that utilizes the tools of ML methods. This framework offers readers a flexible modeling strategy since it accommodates cases from the simplest linear models to the most complex nonlinear models that link a system of endogenous and exogenous variables with non-normal distributions. Using examples to illustrate the techniques of finding ML estimators and estimates, Eliason discusses: what properties are desirable in an estimator; basic techniques for finding ML solutions; the general form of the covariance matrix for ML estimates; the sampling distribution of ML estimators; the application of ML in the normal distribution as well as in other useful distributions; and some helpful illustrations of likelihoods.



Similar Products

Regression Models for Categorical and Limited Dependent Variables (Advanced Quantitative Techniques in the Social Sciences)Interpreting Probability Models: Logit, Probit, and Other Generalized Linear Models (Quantitative Applications in the Social Sciences)Matrix Algebra: An Introduction (Quantitative Applications in the Social Sciences)Data Analysis Using Regression and Multilevel/Hierarchical ModelsUnifying Political Methodology: The Likelihood Theory of Statistical InferenceRegression Models for Categorical Dependent Variables Using Stata, Third EditionComputer Age Statistical Inference: Algorithms, Evidence, and Data Science (Institute of Mathematical Statistics Monographs)Logistic Regression: A Primer (Quantitative Applications in the Social Sciences)Linear Probability, Logit, and Probit Models (Quantitative Applications in the Social Sciences)Mostly Harmless Econometrics: An Empiricist's Companion