Binary outcome models are frequently used in the social sciences and economics. However, such models are difficult to estimate with interdependent data structures, including spatial, temporal, and spatio-temporal autocorrelation because jointly determined error terms in the reduced-form specification are generally analytically intractable. To deal with this problem, simulation-based approaches have been proposed. However, these approaches (i) are computationally intensive and impractical for sizable datasets commonly used in contemporary research, and (ii) rarely address temporal interdependence. As a way forward, we demonstrate how to reduce the computational burden significantly by (i) introducing analytically-tractable pseudo maximum lik...
Abstract: This paper considers spatial autoregressive (SAR) binary choice models in the context of p...
We propose an econometric technique for estimating the parameters of a binary choice model when only...
This paper describes numerically simple estimators that can be used to estimate binary choice and ot...
Binary outcome models are frequently used in the social sciences and economics. However, such models...
Binary outcome models are frequently used in Political Science. However, such models have proven par...
The goal of this paper is to provide a cohesive description and a critical comparison of the main es...
[[abstract]]For binary data with correlation across space and over time, the literature concerning t...
This paper considers the estimation of binary choice model with interactive effects. We propose an e...
This paper describes the development of an unfolding methodology designed to analyze "pick any" or ...
This paper discusses the estimation of binary choice panel data models. We begin with different vers...
This paper presents a new method to approximate the inverse of the spatial lag operator matrix, used...
This paper proposes a semiparametric estimator for spatial autoregressive (SAR) binary choice models...
This study focuses on accommodating spatial dependency in data indexed by geographic location. In pa...
This paper provides a method for estimating large-scale dynamic discrete choice models (in both sing...
We present a summary of important computational issues and opportunities that arise from the use of ...
Abstract: This paper considers spatial autoregressive (SAR) binary choice models in the context of p...
We propose an econometric technique for estimating the parameters of a binary choice model when only...
This paper describes numerically simple estimators that can be used to estimate binary choice and ot...
Binary outcome models are frequently used in the social sciences and economics. However, such models...
Binary outcome models are frequently used in Political Science. However, such models have proven par...
The goal of this paper is to provide a cohesive description and a critical comparison of the main es...
[[abstract]]For binary data with correlation across space and over time, the literature concerning t...
This paper considers the estimation of binary choice model with interactive effects. We propose an e...
This paper describes the development of an unfolding methodology designed to analyze "pick any" or ...
This paper discusses the estimation of binary choice panel data models. We begin with different vers...
This paper presents a new method to approximate the inverse of the spatial lag operator matrix, used...
This paper proposes a semiparametric estimator for spatial autoregressive (SAR) binary choice models...
This study focuses on accommodating spatial dependency in data indexed by geographic location. In pa...
This paper provides a method for estimating large-scale dynamic discrete choice models (in both sing...
We present a summary of important computational issues and opportunities that arise from the use of ...
Abstract: This paper considers spatial autoregressive (SAR) binary choice models in the context of p...
We propose an econometric technique for estimating the parameters of a binary choice model when only...
This paper describes numerically simple estimators that can be used to estimate binary choice and ot...