3,284 research outputs found
Heterogeneous Treatment Effects with Mismeasured Endogenous Treatment
This paper studies the identifying power of an instrumental variable in the
nonparametric heterogeneous treatment effect framework when a binary treatment
is mismeasured and endogenous. Using a binary instrumental variable, I
characterize the sharp identified set for the local average treatment effect
under the exclusion restriction of an instrument and the deterministic
monotonicity of the true treatment in the instrument. Even allowing for general
measurement error (e.g., the measurement error is endogenous), it is still
possible to obtain finite bounds on the local average treatment effect.
Notably, the Wald estimand is an upper bound on the local average treatment
effect, but it is not the sharp bound in general. I also provide a confidence
interval for the local average treatment effect with uniformly asymptotically
valid size control. Furthermore, I demonstrate that the identification strategy
of this paper offers a new use of repeated measurements for tightening the
identified set
Identification and Inference of Network Formation Games with Misclassified Links
This paper considers a network formation model when links are potentially
measured with error. We focus on a game-theoretical model of strategic network
formation with incomplete information, in which the linking decisions depend on
agents' exogenous attributes and endogenous network characteristics. In the
presence of link misclassification, we derive moment conditions that
characterize the identified set for the preference parameters associated with
homophily and network externalities. Based on the moment equality conditions,
we provide an inference method that is asymptotically valid when a single
network of many agents is observed. Finally, we apply our proposed method to
study trust networks in rural villages in southern India
Inference in Dynamic Discrete Choice Problems under Local Misspecification
Single-agent dynamic discrete choice models are typically estimated using
heavily parametrized econometric frameworks, making them susceptible to model
misspecification. This paper investigates how misspecification affects the
results of inference in these models. Specifically, we consider a local
misspecification framework in which specification errors are assumed to vanish
at an arbitrary and unknown rate with the sample size. Relative to global
misspecification, the local misspecification analysis has two important
advantages. First, it yields tractable and general results. Second, it allows
us to focus on parameters with structural interpretation, instead of
"pseudo-true" parameters.
We consider a general class of two-step estimators based on the K-stage
sequential policy function iteration algorithm, where K denotes the number of
iterations employed in the estimation. This class includes Hotz and Miller
(1993)'s conditional choice probability estimator, Aguirregabiria and Mira
(2002)'s pseudo-likelihood estimator, and Pesendorfer and Schmidt-Dengler
(2008)'s asymptotic least squares estimator.
We show that local misspecification can affect the asymptotic distribution
and even the rate of convergence of these estimators. In principle, one might
expect that the effect of the local misspecification could change with the
number of iterations K. One of our main findings is that this is not the case,
i.e., the effect of local misspecification is invariant to K. In practice, this
means that researchers cannot eliminate or even alleviate problems of model
misspecification by changing K
Finite Sample Inference for the Maximum Score Estimand
We provide a finite sample inference method for the structural parameters of
a semiparametric binary response model under a conditional median restriction
originally studied by Manski (1975, 1985). Our inference method is valid for
any sample size and irrespective of whether the structural parameters are point
identified or partially identified, for example due to the lack of a
continuously distributed covariate with large support. Our inference approach
exploits distributional properties of observable outcomes conditional on the
observed sequence of exogenous variables. Moment inequalities conditional on
this size n sequence of exogenous covariates are constructed, and the test
statistic is a monotone function of violations of sample moment inequalities.
The critical value used for inference is provided by the appropriate quantile
of a known function of n independent Rademacher random variables. We
investigate power properties of the underlying test and provide simulation
studies to support the theoretical findings
Recommended from our members
Population and Governance in mid-18th Century Bhutan, as Revealed in the Enthronement Record of Thugs-sprul āJigs med grags pa I (1725-1761)
- ā¦