Until recently, computational constraints forced researchers in the discrete choice area to limit themselves to very simple statistical models, such as the multinomial logit (MNL), in which choice probabilities could be evaluated quickly on a computer. But the MNL only makes sense as a behavioral model under very special circumstances. Recent advances in computation make it possible to estimate richer behavioral models that generate very complex choice probability expressions. This paper discusses a number of possible avenues for future research in the discrete choice area in light of these developments
Assessment of individual preferences is of interest to many disciplines, includ ing economics, marke...
A large number of alternatives characterize the choice set in many activity and travel choice contex...
The increasing availability of individual-level consumer data has facilitated the development of new...
Until recently, computational constraints forced researchers in the discrete choice area to limit th...
This paper introduces new forms, sampling and estimation approaches fordiscrete choice models. The n...
The paper is devoted to the analysis of logit models and their application in the market. A theoreti...
In Alberini et al. (this volume), an overview of the workhorse model (the Multinomial Logit, or MNL)...
We detail the basic theory for models of discrete choice. This encompasses methods of estimation...
This paper shows how to develop new multinomial processing tree (MPT) models for discrete choice, an...
In discrete choice modeling (DCM), model misspecifications may lead to limited predictability and bi...
In this paper, we compare two methods to model the formation of choice sets in the context of discre...
Applications of discrete choice experiments to study consumer choice behavior have grown significant...
In this chapter, we provide an overview of the motivation for, and structure of, advanced discrete c...
In this paper, we compare two methods to model the formation of choice sets in the context of discre...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Civil and Environmental Engineering,...
Assessment of individual preferences is of interest to many disciplines, includ ing economics, marke...
A large number of alternatives characterize the choice set in many activity and travel choice contex...
The increasing availability of individual-level consumer data has facilitated the development of new...
Until recently, computational constraints forced researchers in the discrete choice area to limit th...
This paper introduces new forms, sampling and estimation approaches fordiscrete choice models. The n...
The paper is devoted to the analysis of logit models and their application in the market. A theoreti...
In Alberini et al. (this volume), an overview of the workhorse model (the Multinomial Logit, or MNL)...
We detail the basic theory for models of discrete choice. This encompasses methods of estimation...
This paper shows how to develop new multinomial processing tree (MPT) models for discrete choice, an...
In discrete choice modeling (DCM), model misspecifications may lead to limited predictability and bi...
In this paper, we compare two methods to model the formation of choice sets in the context of discre...
Applications of discrete choice experiments to study consumer choice behavior have grown significant...
In this chapter, we provide an overview of the motivation for, and structure of, advanced discrete c...
In this paper, we compare two methods to model the formation of choice sets in the context of discre...
Thesis (Ph.D.)--Massachusetts Institute of Technology, Dept. of Civil and Environmental Engineering,...
Assessment of individual preferences is of interest to many disciplines, includ ing economics, marke...
A large number of alternatives characterize the choice set in many activity and travel choice contex...
The increasing availability of individual-level consumer data has facilitated the development of new...