AbstractThe latent variable and generalized linear modelling approaches do not provide a systematic approach for modelling discrete choice observational data. Another alternative, the probabilistic reduction (PR) approach, provides a systematic way to specify such models that can yield reliable statistical and substantive inferences. The purpose of this paper is to re-examine the underlying probabilistic foundations of conditional statistical models with binary dependent variables using the PR approach. This leads to the development of the Bernoulli Regression Model, a family of statistical models, which includes the binary logistic regression model. The paper provides an explicit presentation of probabilistic model assumptions, guidance on...
This thesis first considers some extensions of the existing discrete choice models. One such extensi...
The paper provides a novel application of the probabilistic reduction (PR) approach to the analysis ...
I show a simple back-of-the-envelope method for calculating marginal effects in binary choice and c...
The latent variable and generalized linear modelling approaches do not provide a systematic approach...
AbstractThe latent variable and generalized linear modelling approaches do not provide a systematic ...
The classical approach for specifying statistical models with binary dependent variables in economet...
This paper uses information theoretic methods to introduce a new class of probability distributions...
We detail the basic theory for models of discrete choice. This encompasses methods of estimation...
Linear Probability Model (LPM) is commonly used because it is easy to compute and interpret than wit...
A binary response model is a regression model in which the dependentvariable Y is a binary random va...
The estimation of conditional probability distribution functions (PDFs) in a kernel nonparametric fr...
The analysis of binary response data commonly uses models linear in the logistic transform of probab...
AbstractConditional Bernoulli (in short “CB”) models have been recently applied to many statistical ...
This paper develops nonparametric estimation for discrete choice models based on the Mixed Multinomi...
This paper is an exposition of an experiment on revealed preferences, where we posite a novel discre...
This thesis first considers some extensions of the existing discrete choice models. One such extensi...
The paper provides a novel application of the probabilistic reduction (PR) approach to the analysis ...
I show a simple back-of-the-envelope method for calculating marginal effects in binary choice and c...
The latent variable and generalized linear modelling approaches do not provide a systematic approach...
AbstractThe latent variable and generalized linear modelling approaches do not provide a systematic ...
The classical approach for specifying statistical models with binary dependent variables in economet...
This paper uses information theoretic methods to introduce a new class of probability distributions...
We detail the basic theory for models of discrete choice. This encompasses methods of estimation...
Linear Probability Model (LPM) is commonly used because it is easy to compute and interpret than wit...
A binary response model is a regression model in which the dependentvariable Y is a binary random va...
The estimation of conditional probability distribution functions (PDFs) in a kernel nonparametric fr...
The analysis of binary response data commonly uses models linear in the logistic transform of probab...
AbstractConditional Bernoulli (in short “CB”) models have been recently applied to many statistical ...
This paper develops nonparametric estimation for discrete choice models based on the Mixed Multinomi...
This paper is an exposition of an experiment on revealed preferences, where we posite a novel discre...
This thesis first considers some extensions of the existing discrete choice models. One such extensi...
The paper provides a novel application of the probabilistic reduction (PR) approach to the analysis ...
I show a simple back-of-the-envelope method for calculating marginal effects in binary choice and c...