In this thesis an algorithm (MLOPT) for mixed logit models is proposed. Mixed logit models are flexible discrete choice models, but their estimation with large datasets involves the solution of a nonlinear optimization problem with a high dimensional integral in the objective function, which is the log-likelihood function. This complex structure is a general problem that occurs in statistics and optimization. MLOPT uses sampling from the dataset of individuals to generate a data sample. In addition to this, Monte Carlo samples are used to generate an integration sample to estimate the choice probabilities. MLOPT estimates the log-likelihood function values for each individual in the dataset by controlling and adaptively changing the data...
In this article, I provide an illustrative, step-by-step implementation of the expectation–maximizat...
The mixed logit model is considered to be the most promising state of the art discrete choice model ...
This paper proposes the use of a quasi-random sequence for the estimation of the mixed multinomial...
Mixed logit is a widely used discrete outcome model that requires for the analyst to make three impo...
The performances of different simulation-based estimation techniques for mixed logit modeling are ev...
Mixed logit models are a widely-used tool for studying discrete outcome problems. Modeling developme...
In this paper, we evaluate the performance of different simulation-based estimation techniques for M...
AbstractMaximum simulated likelihood (MSL) procedure is generally adopted in discrete choice analysi...
Researchers and analysts are increasingly using mixed logit models for estimating responses to forec...
Mixed Logit model (MXL) is generated from Multinomial Logit model (MNL) for discrete, i.e. nominal...
The mixed choice model is a popular choice model to simulate consumer choice in many domains. This p...
Researchers and analysts are increasingly using mixed logit models for estimating responses to forec...
Estimation of discrete outcome specifications involves significant hypothesis testing, including mul...
This paper introduces the logitr R package for fast maximum likelihood estimation of multinomial log...
Recently, variational Bayesian methods have come into the field of statistics. These methods aim to ...
In this article, I provide an illustrative, step-by-step implementation of the expectation–maximizat...
The mixed logit model is considered to be the most promising state of the art discrete choice model ...
This paper proposes the use of a quasi-random sequence for the estimation of the mixed multinomial...
Mixed logit is a widely used discrete outcome model that requires for the analyst to make three impo...
The performances of different simulation-based estimation techniques for mixed logit modeling are ev...
Mixed logit models are a widely-used tool for studying discrete outcome problems. Modeling developme...
In this paper, we evaluate the performance of different simulation-based estimation techniques for M...
AbstractMaximum simulated likelihood (MSL) procedure is generally adopted in discrete choice analysi...
Researchers and analysts are increasingly using mixed logit models for estimating responses to forec...
Mixed Logit model (MXL) is generated from Multinomial Logit model (MNL) for discrete, i.e. nominal...
The mixed choice model is a popular choice model to simulate consumer choice in many domains. This p...
Researchers and analysts are increasingly using mixed logit models for estimating responses to forec...
Estimation of discrete outcome specifications involves significant hypothesis testing, including mul...
This paper introduces the logitr R package for fast maximum likelihood estimation of multinomial log...
Recently, variational Bayesian methods have come into the field of statistics. These methods aim to ...
In this article, I provide an illustrative, step-by-step implementation of the expectation–maximizat...
The mixed logit model is considered to be the most promising state of the art discrete choice model ...
This paper proposes the use of a quasi-random sequence for the estimation of the mixed multinomial...