2019
DOI: 10.1080/07474938.2019.1682314
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Partial ML estimation for spatial autoregressive nonlinear probit models with autoregressive disturbances

Abstract: In this paper, we propose a Partial MLE (PMLE) for a general spatial nonlinear probit model, i.e., SARAR(1,1) probit, defined through a SARAR(1,1) latent linear model. This model encompasses both the SAE(1) probit and the more interesting SAR(1) probit models, already considered in the literature. We provide a complete asymptotic analysis of our PMLE as well as appropriate definitions of the marginal effects. Moreover, we address the issue of the choice of the groups (couples, in our case) by proposing an algo… Show more

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Cited by 10 publications
(3 citation statements)
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“…Anyway, correlation can change if we generally used dense matrices instead of sparse matrices, please see for example Billé and Leorato (2020), and references therein. 6 Before considering the forecasting procedure, we define the structural model (1) in time first-differencing.…”
Section: Model and Forecasting Proceduresmentioning
confidence: 99%
“…Anyway, correlation can change if we generally used dense matrices instead of sparse matrices, please see for example Billé and Leorato (2020), and references therein. 6 Before considering the forecasting procedure, we define the structural model (1) in time first-differencing.…”
Section: Model and Forecasting Proceduresmentioning
confidence: 99%
“…Based onVijverberg (1997),Beron and Vijverberg (2004) introduce the so-called recursive importance sampling (RIS) estimator and show how this estimator can be used to evaluate an n-dimensional normal probability. More recently,Billé and Leorato (2020), put forth a partial maximum likelihood estimator for a general spatial non-linear probit model, and perform a complete asymptotic analysis of their estimator.…”
mentioning
confidence: 99%
“… 3 For a thorough analytic formulation of g i , see Beron and Vijverberg (2004) and Billé and Leorato (2020). …”
mentioning
confidence: 99%