2019
DOI: 10.1111/joes.12333
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Spatial Limited Dependent Variable Models: A Review Focused on Specification, Estimation, and Health Economics Applications

Abstract: Modeling individual choices is one of the main aim in microeconometrics. Discrete choice models have been widely used to describe economic agents' utility functions and most of them play a paramount role in applied health economics. On the other hand, spatial econometrics collects a series of econometric tools, which are particularly useful when we deal with spatially distributed data sets. Accounting for spatial dependence can avoid inconsistency problems of the commonly used statistical estimators. However, … Show more

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Cited by 14 publications
(6 citation statements)
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“…Hence, failure to account for patients' heterogeneity in the trade-off of health and wealth may lead to self-selection bias in estimates of spatial healthcare accessibility. This study adds to the growing body of literature that highlights the association between the distribution of healthcare facilities or hospitals and the socio-economic characteristics and health level of neighborhood residents [30,31,37,50,64].…”
Section: Discussionmentioning
confidence: 93%
“…Hence, failure to account for patients' heterogeneity in the trade-off of health and wealth may lead to self-selection bias in estimates of spatial healthcare accessibility. This study adds to the growing body of literature that highlights the association between the distribution of healthcare facilities or hospitals and the socio-economic characteristics and health level of neighborhood residents [30,31,37,50,64].…”
Section: Discussionmentioning
confidence: 93%
“…One constraint is the lack of spatial count and spatial corner response estimators in statistical programmes (Lambert et al, 2010;Brown & Lambert, 2016). For a review of main methodological issues and solutions in spatial non-linear modelling, see Billé and Arbia (2019). Nonetheless spatial models may be of interest to researchers because incorporation of spatial spillovers improves model performance in the presence of excess of zeros in highly heterogeneous areas (Buczkowska & de Lapparent, 2014).…”
Section: Spatial Regression Modelsmentioning
confidence: 99%
“…whereas Assumption 1(b) and Lemma 2.1 ensure that the model in equation 1has a reduced form. Then if we interpret the model in (1) as an equilibrium relationship -see Billé and Arbia (2019) -this choice of the parameter space rules out unstable Nash equilibria. Note that, if all the eigenvalues of W n (resp.…”
Section: Model Specificationmentioning
confidence: 99%
“…We refer to Appendix D for more details on this issue. Finally, it is worth noting that alternative non-nested model specifications, e.g., spatial Durbin models, within nonlinear specifications can be defined, and the reader is referred to Billé and Arbia (2019).…”
Section: Nested Model Specificationsmentioning
confidence: 99%