Discrete choice models are widely used in studies of recreation demand. They have proven valuable when modeling situations where decision makers face large choice sets and site substitution is important. However, when the choice set faced by the individual becomes very large (on the order of hundreds or thousands of alternatives), computational limitations make estimation with the full choice set intractable. Sampling of alternatives in a conditional logit framework is an effective method to limit computational burdens while still producing consistent estimates. This method is allowed by the existence of the independence of irrelevant alternatives (IIA) assumption. More advanced mixed logit models account for unobserved preference hete...
The nested logit model has been used extensively to model multi-dimensional choice situations. A dra...
"McFadden's random alternative sampling conditional logit estimator permits researchers and survey d...
Practitioners have frequently used the conditional logit (CL) model or multinomial logit (ML) model ...
Discrete choice models are widely used in studies of recreation demand. They have proven valuable w...
We use the expectation-maximization (EM) algorithm to consistently estimate a latent class, mixed lo...
A large number of alternatives characterize the choice set in many activity and travel choice contex...
Estimation of discrete outcome specifications involves significant hypothesis testing, including mul...
ABSTRACT: The multinomial logit model (MNL) has for many years provided the fundamental platform for...
We develop econometric models to jointly estimate revealed preference (RP) and stated preference (SP...
In recreation demand models nonparticipation is usually estimated as the probability mass on zero de...
We thank Ray Palmquist, Laura Taylor, and Xiayong Zhang for helpful comments. All remaining errors a...
Representing unobserved heterogeneity or taste variations in behavioral choice analysis is receiving...
The multinomial logit model (MNL) has for many years provided the fundamental platform for the analy...
AbstractMaximum simulated likelihood (MSL) procedure is generally adopted in discrete choice analysi...
The nested logit model has been used extensively to model multi-dimensional choice situations. A dra...
The nested logit model has been used extensively to model multi-dimensional choice situations. A dra...
"McFadden's random alternative sampling conditional logit estimator permits researchers and survey d...
Practitioners have frequently used the conditional logit (CL) model or multinomial logit (ML) model ...
Discrete choice models are widely used in studies of recreation demand. They have proven valuable w...
We use the expectation-maximization (EM) algorithm to consistently estimate a latent class, mixed lo...
A large number of alternatives characterize the choice set in many activity and travel choice contex...
Estimation of discrete outcome specifications involves significant hypothesis testing, including mul...
ABSTRACT: The multinomial logit model (MNL) has for many years provided the fundamental platform for...
We develop econometric models to jointly estimate revealed preference (RP) and stated preference (SP...
In recreation demand models nonparticipation is usually estimated as the probability mass on zero de...
We thank Ray Palmquist, Laura Taylor, and Xiayong Zhang for helpful comments. All remaining errors a...
Representing unobserved heterogeneity or taste variations in behavioral choice analysis is receiving...
The multinomial logit model (MNL) has for many years provided the fundamental platform for the analy...
AbstractMaximum simulated likelihood (MSL) procedure is generally adopted in discrete choice analysi...
The nested logit model has been used extensively to model multi-dimensional choice situations. A dra...
The nested logit model has been used extensively to model multi-dimensional choice situations. A dra...
"McFadden's random alternative sampling conditional logit estimator permits researchers and survey d...
Practitioners have frequently used the conditional logit (CL) model or multinomial logit (ML) model ...