Many economic models of consumer demand require researchers to partition sets of products or attributes prior to the analysis. These models are common in applied problems when the product space is large or spans multiple categories. While the partition is traditionally fixed a priori, we let the partition be a model parameter and propose a Bayesian method for inference. The challenge is that demand systems are commonly multivariate models that are not conditionally conjugate with respect to partition indices, precluding the use of Gibbs sampling. We solve this problem by constructing a new location-scale partition distribution that can generate random-walk Metropolis–Hastings proposals and also serve as a prior. Our method is illustrated in...
Time varying proportions arise frequently in economics. Market shares show the relative importance o...
We introduce a new distributionally robust optimization model to address a two-period, multi-item jo...
In this paper we apply Maximum Likelihood and Bayesian methods to explain differences in floorspace ...
McCausland (2004a) describes a new theory of random consumer demand. Theoretically consistent random...
Consumers are often observed to purchase more than one variety of a product on a given shopping trip...
We analyze multicategory purchases of households by means of heterogeneous multivariate probit model...
We propose a probability model for random partitions in the presence of covariates. In other words, ...
In this paper we propose a new Bayesian approach to data modelling. The Bayesian partition model con...
This paper studies a linear random utility model of demand for variety under spatial product differe...
Time-varying proportions arise frequently in economics. Market shares show the relative importance o...
We propose a general partition-based strategy to estimate conditional density with candidate densiti...
This paper presents a new strategy to estimate the rational expectations storage model. It uses info...
International audienceModeling the lead-time demand for the multiple slow-moving inventory items in ...
textabstractIn this paper we apply Maximum Likelihood and Bayesian methods to explain differences in...
A Bayesian approach to the classification problem is proposed in which random partitions play a cent...
Time varying proportions arise frequently in economics. Market shares show the relative importance o...
We introduce a new distributionally robust optimization model to address a two-period, multi-item jo...
In this paper we apply Maximum Likelihood and Bayesian methods to explain differences in floorspace ...
McCausland (2004a) describes a new theory of random consumer demand. Theoretically consistent random...
Consumers are often observed to purchase more than one variety of a product on a given shopping trip...
We analyze multicategory purchases of households by means of heterogeneous multivariate probit model...
We propose a probability model for random partitions in the presence of covariates. In other words, ...
In this paper we propose a new Bayesian approach to data modelling. The Bayesian partition model con...
This paper studies a linear random utility model of demand for variety under spatial product differe...
Time-varying proportions arise frequently in economics. Market shares show the relative importance o...
We propose a general partition-based strategy to estimate conditional density with candidate densiti...
This paper presents a new strategy to estimate the rational expectations storage model. It uses info...
International audienceModeling the lead-time demand for the multiple slow-moving inventory items in ...
textabstractIn this paper we apply Maximum Likelihood and Bayesian methods to explain differences in...
A Bayesian approach to the classification problem is proposed in which random partitions play a cent...
Time varying proportions arise frequently in economics. Market shares show the relative importance o...
We introduce a new distributionally robust optimization model to address a two-period, multi-item jo...
In this paper we apply Maximum Likelihood and Bayesian methods to explain differences in floorspace ...