Specifying utility functions is a key step towards applying the discrete choice framework for understanding the behaviour processes that govern user choices. However, identifying the utility function specifications that best model and explain the observed choices can be a very challenging and time-consuming task. This paper seeks to help modellers by leveraging the Bayesian framework and the concept of automatic relevance determination (ARD), in order to automatically determine an optimal utility function specification from an exponentially large set of possible specifications in a purely data-driven manner. Based on recent advances in approximate Bayesian inference, a doubly stochastic variational inference is developed, which allows the p...
Several non-linear functions and machine learning methods have been developed for flexible specifica...
In this chapter, we provide an overview of the motivation for, and structure of, advanced discrete c...
Random utility theory models an agent’s preferences on alternatives by drawing a real-valued score o...
Utility elicitation is an important component of many applications, such as decision support systems...
Thesis: Ph. D. in Linguistics, Massachusetts Institute of Technology, Department of Linguistics and ...
Discrete choice experiments are widely used to learn about the distribution of individual preference...
McCausland (2004a) describes a new theory of random consumer demand. Theoretically consistent random...
This dissertation presents a new Bayesian approach to likelihood-based choice multidimensional scali...
The emergence of Big Data has enabled new research perspectives in the discrete choice community. Wh...
International audienceWe provide a characterisation of choice behaviour generated by a Bayesian expe...
This paper adopts an approach based on the concepts of random utility maximization and builds on the...
This paper demonstrates a method for estimating logit choice models for small sample data, including...
Determining appropriate utility specifications for discrete choice models is time-consuming and pron...
AbstractWhen modeling a decision problem using the influence diagram framework, the quantitative par...
High-consequence decisions often require a detailed investigation of a decision maker's preferences,...
Several non-linear functions and machine learning methods have been developed for flexible specifica...
In this chapter, we provide an overview of the motivation for, and structure of, advanced discrete c...
Random utility theory models an agent’s preferences on alternatives by drawing a real-valued score o...
Utility elicitation is an important component of many applications, such as decision support systems...
Thesis: Ph. D. in Linguistics, Massachusetts Institute of Technology, Department of Linguistics and ...
Discrete choice experiments are widely used to learn about the distribution of individual preference...
McCausland (2004a) describes a new theory of random consumer demand. Theoretically consistent random...
This dissertation presents a new Bayesian approach to likelihood-based choice multidimensional scali...
The emergence of Big Data has enabled new research perspectives in the discrete choice community. Wh...
International audienceWe provide a characterisation of choice behaviour generated by a Bayesian expe...
This paper adopts an approach based on the concepts of random utility maximization and builds on the...
This paper demonstrates a method for estimating logit choice models for small sample data, including...
Determining appropriate utility specifications for discrete choice models is time-consuming and pron...
AbstractWhen modeling a decision problem using the influence diagram framework, the quantitative par...
High-consequence decisions often require a detailed investigation of a decision maker's preferences,...
Several non-linear functions and machine learning methods have been developed for flexible specifica...
In this chapter, we provide an overview of the motivation for, and structure of, advanced discrete c...
Random utility theory models an agent’s preferences on alternatives by drawing a real-valued score o...