Mixed logit is a widely used discrete outcome model that requires for the analyst to make three important decisions that affect the quality of the model specification. These decisions are: 1) what variables are considered in the analysis, 2) which variables are to be modeled with random parameters, and; 3) what density function do these parameters follow. The literature provides guidance; however, a strong statistical background and an ad hoc search process are required to obtain an adequate model specification. Knowledge and data about the problem context are required; also, the process is time consuming, and there is no certainty that the specified model is the best available. This paper proposes an algorithm to assist analysts in the sea...
A computationally attractive model for the analysis of conjoint choice experiments is the mixed mult...
This article describes the mixlogit Stata command for fitting mixed logit models by using maximum si...
The article applies unit-level logit mixed models to estimating small-area weighted sums of probabil...
Mixed logit is a widely used discrete outcome model that requires for the analyst to make three impo...
Mixed logit models are a widely-used tool for studying discrete outcome problems. Modeling developme...
In this thesis an algorithm (MLOPT) for mixed logit models is proposed. Mixed logit models are flexi...
Estimation of discrete outcome specifications involves significant hypothesis testing, including mul...
Mixed Logit model (MXL) is generated from Multinomial Logit model (MNL) for discrete, i.e. nominal...
In this paper, we evaluate the performance of different simulation-based estimation techniques for M...
Abstract: Mixed logit is a highly flexible model that can approximate any random utility model. In t...
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 ...
For the basic logit models, the response Y takes the value 1 with the success probability P1, and th...
A mixed logit function, also known as a random-coefficients logit function, is an integral of logit ...
The performances of different simulation-based estimation techniques for mixed logit modeling are ev...
A computationally attractive model for the analysis of conjoint choice experiments is the mixed mult...
This article describes the mixlogit Stata command for fitting mixed logit models by using maximum si...
The article applies unit-level logit mixed models to estimating small-area weighted sums of probabil...
Mixed logit is a widely used discrete outcome model that requires for the analyst to make three impo...
Mixed logit models are a widely-used tool for studying discrete outcome problems. Modeling developme...
In this thesis an algorithm (MLOPT) for mixed logit models is proposed. Mixed logit models are flexi...
Estimation of discrete outcome specifications involves significant hypothesis testing, including mul...
Mixed Logit model (MXL) is generated from Multinomial Logit model (MNL) for discrete, i.e. nominal...
In this paper, we evaluate the performance of different simulation-based estimation techniques for M...
Abstract: Mixed logit is a highly flexible model that can approximate any random utility model. In t...
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 ...
For the basic logit models, the response Y takes the value 1 with the success probability P1, and th...
A mixed logit function, also known as a random-coefficients logit function, is an integral of logit ...
The performances of different simulation-based estimation techniques for mixed logit modeling are ev...
A computationally attractive model for the analysis of conjoint choice experiments is the mixed mult...
This article describes the mixlogit Stata command for fitting mixed logit models by using maximum si...
The article applies unit-level logit mixed models to estimating small-area weighted sums of probabil...