<p>We consider an extended spatial autoregressive model that can incorporate possible endogenous interactions, exogenous interactions, unobserved group fixed effects and the correlation of unobservables. In the generalized method of moments (GMM) and the maximum likelihood (ML) frameworks, we introduce simple gradient-based robust test statistics that can be used to test for the presence of the endogenous effects, the correlation of unobservables and the contextual effects. These test statistics are robust to local parametric misspecifications and only require consistent estimates from a transformed linear regression model to compute. We carry out an extensive Monte Carlo study to investigate the size and power properties of the proposed te...
Spatial autoregressive (SAR) and related models offer flexible yet parsimonious ways to model spatial...
The study of social interactions has enriched both the domain of inquiry of economists and the way e...
• This paper analyzes the possibility of detecting observable and non-observable social interactions...
We consider an extended spatial autoregressive model that can incorporate possible endogenous intera...
The paper studies spatial autoregressive models with group interaction structure, focussing on estim...
The paper studies spatial autoregressive models with group interaction structure, focussing on estim...
This paper considers a class of GMM estimators for general dynamic panel models, allowing for cross ...
International audienceThe interaction matrix, or spatial weight matrix, is the fundamental tool to m...
This dissertation investigates semiparametric social interaction models. The goal is to identify and...
The estimation of spillover and peer effects presents challenges that are still unsolved. In fact, e...
<p>In this study, we investigate the finite sample properties of the optimal generalized method of m...
This article proposes two new classes of nonparametric tests for the correct specification of linear...
The interaction matrix, or spatial weight matrix, is the fundamental tool to model cross-sectional i...
We develop non-nested tests in a general spatial, spatio-temporal or panel data context. The spatial...
The study of social network dynamics has become an increasingly important component of many discipli...
Spatial autoregressive (SAR) and related models offer flexible yet parsimonious ways to model spatial...
The study of social interactions has enriched both the domain of inquiry of economists and the way e...
• This paper analyzes the possibility of detecting observable and non-observable social interactions...
We consider an extended spatial autoregressive model that can incorporate possible endogenous intera...
The paper studies spatial autoregressive models with group interaction structure, focussing on estim...
The paper studies spatial autoregressive models with group interaction structure, focussing on estim...
This paper considers a class of GMM estimators for general dynamic panel models, allowing for cross ...
International audienceThe interaction matrix, or spatial weight matrix, is the fundamental tool to m...
This dissertation investigates semiparametric social interaction models. The goal is to identify and...
The estimation of spillover and peer effects presents challenges that are still unsolved. In fact, e...
<p>In this study, we investigate the finite sample properties of the optimal generalized method of m...
This article proposes two new classes of nonparametric tests for the correct specification of linear...
The interaction matrix, or spatial weight matrix, is the fundamental tool to model cross-sectional i...
We develop non-nested tests in a general spatial, spatio-temporal or panel data context. The spatial...
The study of social network dynamics has become an increasingly important component of many discipli...
Spatial autoregressive (SAR) and related models offer flexible yet parsimonious ways to model spatial...
The study of social interactions has enriched both the domain of inquiry of economists and the way e...
• This paper analyzes the possibility of detecting observable and non-observable social interactions...