We present a summary of important computational issues and opportunities that arise from the use of semi-aggregate data (where the explanatory data for choice scenarios are not necessarily unique for each decision-maker) in discrete choice models. These data are encountered with large transactional databases that have limited consumer information, a common feature in some transportation planning applications, such as airline itinerary choice modeling. We developed a freeware software package called Larch, written in Python and C++, to take advantage of these kind of data to greatly speed the estimation of discrete choice model parameters. Benchmarking experiments against Stata (a commonly used commercial package), Biogeme (a commonly used f...
The nested logit model has been used extensively to model multi-dimensional choice situations. A dra...
Understanding various micro-decisions of travelers (e.g., choice of vehicles, travel modes, or desti...
In Alberini et al. (this volume), an overview of the workhorse model (the Multinomial Logit, or MNL)...
We present a summary of important computational issues and opportunities that arise from the use of ...
Discrete choice models are constantly in evolution in the literature. Since they enable to capture w...
Until recently, computational constraints forced researchers in the discrete choice area to limit th...
The opportunity to have seven data sets associated with a stated choice experiment that are very sim...
mlogit is a package for R which enables the estimation of the multinomial logit models with individu...
The main goal of this study is the development of an aggregate air itinerary market share model. In ...
Estimation with the Nested Logit Model: Specifications and Software Particularities Abstract: The pa...
The multinomial logit model in discrete choice analysis is widely used in transport research. It has...
In discrete choice modeling (DCM), model misspecifications may lead to limited predictability and bi...
In this chapter, we provide an overview of the motivation for, and structure of, advanced discrete c...
Discrete choice models, like the multinomial logit (MNL), have long been recognized for their abilit...
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...
Understanding various micro-decisions of travelers (e.g., choice of vehicles, travel modes, or desti...
In Alberini et al. (this volume), an overview of the workhorse model (the Multinomial Logit, or MNL)...
We present a summary of important computational issues and opportunities that arise from the use of ...
Discrete choice models are constantly in evolution in the literature. Since they enable to capture w...
Until recently, computational constraints forced researchers in the discrete choice area to limit th...
The opportunity to have seven data sets associated with a stated choice experiment that are very sim...
mlogit is a package for R which enables the estimation of the multinomial logit models with individu...
The main goal of this study is the development of an aggregate air itinerary market share model. In ...
Estimation with the Nested Logit Model: Specifications and Software Particularities Abstract: The pa...
The multinomial logit model in discrete choice analysis is widely used in transport research. It has...
In discrete choice modeling (DCM), model misspecifications may lead to limited predictability and bi...
In this chapter, we provide an overview of the motivation for, and structure of, advanced discrete c...
Discrete choice models, like the multinomial logit (MNL), have long been recognized for their abilit...
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...
Understanding various micro-decisions of travelers (e.g., choice of vehicles, travel modes, or desti...
In Alberini et al. (this volume), an overview of the workhorse model (the Multinomial Logit, or MNL)...