This study focuses on accommodating spatial dependency in data indexed by geographic location. In particular, the emphasis is on accommodating spatial error correlation across observational units in binary discrete choice models. We propose a copula-based approach to spatial dependence modeling based on a spatial logit structure rather than a spatial probit structure. In this approach, the dependence between the logistic error terms of different observational units is directly accommodated using a multivariate logistic distribution based on the Farlie-Gumbel-Morgenstein (FGM) copula. The approach represents a simple and powerful technique that results in a closed-form analytic expression for the joint probability of choice across observatio...
A copula-based dependence approach accommodates various facets of dependence structures in building ...
There are reasons researchers may be interested in accounting for spatial heterogeneity of preferenc...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...
Spatial analysis, Copula, Maximum likelihood estimation, Teenager physical activity, Public health, ...
This study proposes a simple and practical Composite Marginal Likelihood (CML) inference approach to...
textSpatial and social dependence shape human activity-travel pattern decisions and their antecedent...
This paper presents a modeling methodology capable of accounting for spatial correlation across choi...
Summary: Spatially-referenced binary data are common in epidemiology and public health. Owing to its...
This paper presents the process of derivation and development of a spatial choice model. A mixed (ra...
In recent years, there have been important developments in the simulation analysis of the mixed mult...
At the time of publication I.N. Sener and C.R. Bhat were at the University of Texas at Austin; and R...
This paper demonstrates how empirical copulas can be used to describe and model spatial dependence s...
AbstractCopulas are a flexible tool to model dependence of random variables. They cover the range fr...
<p>We propose a new copula model that can be used with replicated spatial data. Unlike the multivari...
Abstract: Simulating spatial correlated binary data is very important on many cases, but it is not e...
A copula-based dependence approach accommodates various facets of dependence structures in building ...
There are reasons researchers may be interested in accounting for spatial heterogeneity of preferenc...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...
Spatial analysis, Copula, Maximum likelihood estimation, Teenager physical activity, Public health, ...
This study proposes a simple and practical Composite Marginal Likelihood (CML) inference approach to...
textSpatial and social dependence shape human activity-travel pattern decisions and their antecedent...
This paper presents a modeling methodology capable of accounting for spatial correlation across choi...
Summary: Spatially-referenced binary data are common in epidemiology and public health. Owing to its...
This paper presents the process of derivation and development of a spatial choice model. A mixed (ra...
In recent years, there have been important developments in the simulation analysis of the mixed mult...
At the time of publication I.N. Sener and C.R. Bhat were at the University of Texas at Austin; and R...
This paper demonstrates how empirical copulas can be used to describe and model spatial dependence s...
AbstractCopulas are a flexible tool to model dependence of random variables. They cover the range fr...
<p>We propose a new copula model that can be used with replicated spatial data. Unlike the multivari...
Abstract: Simulating spatial correlated binary data is very important on many cases, but it is not e...
A copula-based dependence approach accommodates various facets of dependence structures in building ...
There are reasons researchers may be interested in accounting for spatial heterogeneity of preferenc...
In recent years, spatial data widely exist in various fields such as finance, geology, environment, ...