2009
DOI: 10.1007/s10109-009-0077-9
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A copula-based closed-form binary logit choice model for accommodating spatial correlation across observational units

Abstract: 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… Show more

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Cited by 77 publications
(51 citation statements)
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“…Almost all earlier research efforts employing the CML technique have used the pairwise approach in which the observed events e A correspond to a pair of observations from the (QT×1) vector m. These earlier studies include Apanasovich et al, (2008), Varin and Vidoni (2009), Engle et al (2007), Bhat et al (2010a), and Bhat and Sener (2009). Alternatively, the analyst can also consider larger subsets of observations, such as triplets or quadruplets or even higher dimensional subsets (see Engler et al, 2006 andCaragea and.…”
Section: The Composite Marginal Likelihood Approachmentioning
confidence: 99%
“…Almost all earlier research efforts employing the CML technique have used the pairwise approach in which the observed events e A correspond to a pair of observations from the (QT×1) vector m. These earlier studies include Apanasovich et al, (2008), Varin and Vidoni (2009), Engle et al (2007), Bhat et al (2010a), and Bhat and Sener (2009). Alternatively, the analyst can also consider larger subsets of observations, such as triplets or quadruplets or even higher dimensional subsets (see Engler et al, 2006 andCaragea and.…”
Section: The Composite Marginal Likelihood Approachmentioning
confidence: 99%
“…Recent modeling frameworks account for a large number of (random) effects: heterogeneity in preferences (Hess et al, 2005;Cirillo and Axhausen, 2006) and/or in scale factor (Hess et al, 2009), variability in willingness to pay , correlation across alternatives (Brownstone et al, 2000), in space (Bhat and Sener, 2009), etc. Advanced discrete choice models are often associated with choice probabilities that can be written as multivariate integrals, but do not admit a closed-form formula.…”
Section: Introductionmentioning
confidence: 99%
“…Recently, Páez et al (2013) introduced a spatial indicator that was incorporated into discrete choice models for household-based travel estimation. Another groundbreaking study was conducted by Bhat and Sener (2009), introducing a multivariate logistic distribution copula-based approach to address spatial dependency and heteroscedasticity issues in binary discrete choice models.…”
Section: Introductionmentioning
confidence: 99%