We discuss the fundamental issue of identification in linear instrumental variable (IV) models with unknown IV validity. We revisit the popular majority and plurality rules and show that no identification condition can be "if and only if" in general. With the assumption of the "sparsest rule", which is equivalent to the plurality rule but becomes operational in computation algorithms, we investigate and prove the advantages of non-convex penalized approaches over other IV estimators based on two-step selections, in terms of selection consistency and accommodation for individually weak IVs. Furthermore, we propose a surrogate sparsest penalty that aligns with the identification condition and provides oracle sparse structure simultaneously. D...
Comments welcome This paper focuses on the efficient estimation of a finite dimensional parameter in...
This paper explores the sensitivity of plug-in based subset tests to instrument exclusion in linear ...
Robust methods for instrumental variable inference have received considerable attention recently. Th...
Abstract. We develop results for the use of LASSO and Post-LASSO methods to form first-stage predict...
This paper provides a brief review of the current state of knowledge on the topic of weakly-identifi...
It is now well known that standard asymptotic inference techniques for instru-mental variable estima...
<div><p>We study estimation and inference in settings where the interest is in the effect of a poten...
This paper analyzes the conditions under which consistent estimation can be achieved in instrumental...
This thesis consists of four self-contained chapters. Chapter 2 (co-authored with Prof. Sophocles M...
We suggest a way to perform parsimonious instrumental variables estimation in the presence of many, ...
We propose a new method, the confidence interval (CI) method, to select valid instruments from a lar...
We show that the (conditional) limiting distributions of the subset extensions of the weak instrumen...
For a linear IV regression, we propose two new inference procedures on parameters of endogenous vari...
Instrumental variables estimation can, in principle, avoid biases that ordinary least squares estima...
This paper focuses on the estimation of a \u85nite dimensional parameter in a linear model where the...
Comments welcome This paper focuses on the efficient estimation of a finite dimensional parameter in...
This paper explores the sensitivity of plug-in based subset tests to instrument exclusion in linear ...
Robust methods for instrumental variable inference have received considerable attention recently. Th...
Abstract. We develop results for the use of LASSO and Post-LASSO methods to form first-stage predict...
This paper provides a brief review of the current state of knowledge on the topic of weakly-identifi...
It is now well known that standard asymptotic inference techniques for instru-mental variable estima...
<div><p>We study estimation and inference in settings where the interest is in the effect of a poten...
This paper analyzes the conditions under which consistent estimation can be achieved in instrumental...
This thesis consists of four self-contained chapters. Chapter 2 (co-authored with Prof. Sophocles M...
We suggest a way to perform parsimonious instrumental variables estimation in the presence of many, ...
We propose a new method, the confidence interval (CI) method, to select valid instruments from a lar...
We show that the (conditional) limiting distributions of the subset extensions of the weak instrumen...
For a linear IV regression, we propose two new inference procedures on parameters of endogenous vari...
Instrumental variables estimation can, in principle, avoid biases that ordinary least squares estima...
This paper focuses on the estimation of a \u85nite dimensional parameter in a linear model where the...
Comments welcome This paper focuses on the efficient estimation of a finite dimensional parameter in...
This paper explores the sensitivity of plug-in based subset tests to instrument exclusion in linear ...
Robust methods for instrumental variable inference have received considerable attention recently. Th...