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Inference On Local Average Treatment Effects For Misclassified Treatment


Inference On Local Average Treatment Effects For Misclassified Treatment
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Inference On Local Average Treatment Effects For Misclassified Treatment


Inference On Local Average Treatment Effects For Misclassified Treatment
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Author : Takahide Yanagi
language : en
Publisher:
Release Date : 2018

Inference On Local Average Treatment Effects For Misclassified Treatment written by Takahide Yanagi and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2018 with categories.


We develop point-identification for the local average treatment effect when the binary treatment contains a measurement error. The standard instrumental variable estimator is inconsistent for the parameter since the measurement error is non-classical by construction. We correct the problem by identifying the distribution of the measurement error based on the use of an exogenous variable that can even be a binary covariate. The moment conditions derived from the identification lead to generalized method of moments estimation with asymptotically valid inferences. Monte Carlo simulations and an empirical illustration demonstrate the usefulness of the proposed procedure.



Inference On Average Treatment Effects In Aggregate Panel Data Settings


Inference On Average Treatment Effects In Aggregate Panel Data Settings
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Author : Victor Chernozhukov
language : en
Publisher:
Release Date : 2019

Inference On Average Treatment Effects In Aggregate Panel Data Settings written by Victor Chernozhukov and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2019 with categories.


This paper studies inference on treatment effects in aggregate panel data settings with a single treated unit and many control units. We propose new methods for making inference on average treatment effects in settings where both the number of pre-treatment and the number of post-treatment periods are large. We use linear models to approximate the counterfactual mean outcomes in the absence of the treatment. The counterfactuals are estimated using constrained Lasso, an essentially tuning free regression approach that nests difference-in-differences and synthetic control as special cases. We propose a K-fold cross-fitting procedure to remove the bias induced by regularization. To avoid the estimation of the long run variance, we construct a self-normalized t-statistic. The test statistic has an asymptotically pivotal distribution (a student t-distribution with K - 1 degrees of freedom), which makes our procedure very easy to implement. Our approach has several theoretical advantages. First, it does not rely on any sparsity assumptions. Second, it is fully robust against misspecification of the linear model. Third, it is more efficient than difference-in-means and difference-in-differences estimators. The proposed method demonstrates an excellent performance in simulation experiments, and is taken to a data application, where we re-evaluate the economic consequences of terrorism.



Estimation Of Average Treatment Effects With Misclassification


Estimation Of Average Treatment Effects With Misclassification
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Author :
language : en
Publisher:
Release Date : 2003

Estimation Of Average Treatment Effects With Misclassification written by and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2003 with categories.




Robust Inference On Average Treatment Effects With Possibly More Covariates Than Observations


Robust Inference On Average Treatment Effects With Possibly More Covariates Than Observations
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Author : Max Farrell
language : en
Publisher:
Release Date : 2015

Robust Inference On Average Treatment Effects With Possibly More Covariates Than Observations written by Max Farrell and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2015 with categories.


This paper concerns robust inference on average treatment effects following model selection. In the selection on observables framework, we show how to construct confidence intervals based on a doubly-robust estimator that are robust to model selection errors and prove that they are valid uniformly over a large class of treatment effect models. The class allows for multivalued treatments with heterogeneous effects (in observables), general heteroskedasticity, and selection amongst (possibly) more covariates than observations. Our estimator attains the semiparametric efficiency bound under appropriate conditions. Precise conditions are given for any model selector to yield these results, and we show how to combine data-driven selection with economic theory. For implementation, we give a specific proposal for selection based on the group lasso and derive new technical results for high-dimensional, sparse multinomial logistic regression. A simulation study shows our estimator performs very well in finite samples over a wide range of models. Revisiting the National Supported Work demonstration data, our method yields accurate estimates and tight confidence intervals.



Nonparametric Iv Estimation Of Local Average Treatment Effects With Covariates


Nonparametric Iv Estimation Of Local Average Treatment Effects With Covariates
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Author : Markus Frölich
language : en
Publisher:
Release Date : 2002

Nonparametric Iv Estimation Of Local Average Treatment Effects With Covariates written by Markus Frölich and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2002 with categories.




Clustered Local Average Treatment Effects


Clustered Local Average Treatment Effects
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Author : Didier Nibbering
language : en
Publisher:
Release Date : 2022

Clustered Local Average Treatment Effects written by Didier Nibbering and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2022 with categories.


Multiple unordered treatments with a binary instrument for each treatment are common in policy evaluation. This multiple treatment setting allows for different types of changes in treatment status that are non-compliant with the activated instrument. Therefore, instrumental variable (IV) methods have to rely on strong assumptions on the subjects' behavior to identify local average treatment effects (LATEs). This paper introduces a new IV strategy that identifies an interpretable weighted average of LATEs under relaxed assumptions, in the presence of clusters with similar treatments. The clustered LATEs allow for shifts across treatment clusters that are consistent with preference updating, but render IV estimation of individual LATEs biased. The clustered LATEs are estimated by standard IV methods, and we provide an algorithm that estimates the treatment clusters. We empirically analyze the effect of fields of study on academic student progress, and find violations of the LATE assumptions in line with preference updating, clusters with similar fields, treatment effect heterogeneity across students, and significant differences in student progress due to fields of study.



Identification And Estimation Of Local Average Treatment Effects


Identification And Estimation Of Local Average Treatment Effects
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Author : Joshua D. Angrist
language : en
Publisher:
Release Date : 1995

Identification And Estimation Of Local Average Treatment Effects written by Joshua D. Angrist and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 1995 with categories.


We investigate conditions sufficient for identification of average treatment effects using instrumental variables. First we show that the existence of valid instruments is not sufficient to identify any meaningful average treatment effect. We then establish that the combination of an instrument and a condition on the relation between the instrument and the participation status is sufficient for identification of a local average treatment effect for those who can be induced to change their participation status by changing the value of the instrument. Finally we derive the probability limit of the standard IV estimator under these conditions. It is seen to be a weighted average of local average treatment effects.



Estimation Of Treatment Effects With High Dimensional Controls


Estimation Of Treatment Effects With High Dimensional Controls
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Author : Alexandre Belloni
language : en
Publisher:
Release Date : 2011

Estimation Of Treatment Effects With High Dimensional Controls written by Alexandre Belloni and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2011 with categories.


We propose methods for inference on the average effect of a treatment on a scalar outcome in the presence of very many controls. Our setting is a partially linear regression model containing the treatment/policy variable and a large number p of controls or series terms, with p that is possibly much larger than the sample size n, but where only s “n unknown controls or series terms are needed to approximate the regression function accurately. The latter sparsity condition makes it possible to estimate the entire regression function as well as the average treatment effect by selecting an approximately the right set of controls using Lasso and related methods. We develop estimation and inference methods for the average treatment effect in this setting, proposing a novel "post double selection" method that provides attractive inferential and estimation properties. In our analysis, in order to cover realistic applications, we expressly allow for imperfect selection of the controls and account for the impact of selection errors on estimation and inference. In order to cover typical applications in economics, we employ the selection methods designed to deal with non-Gaussian and heteroscedastic disturbances. We illustrate the use of new methods with numerical simulations and an application to the effect of abortion on crime rates. -- treatment effects ; high-dimensional regression ; inference under imperfect model selection



Three Essays On The Estimation Of Average Treatment Effects In Quasi Experimental Panel Data


Three Essays On The Estimation Of Average Treatment Effects In Quasi Experimental Panel Data
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Author : Kathleen T. Li
language : en
Publisher:
Release Date : 2018

Three Essays On The Estimation Of Average Treatment Effects In Quasi Experimental Panel Data written by Kathleen T. Li and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2018 with categories.


Identifying average treatment effects (ATE) from quasi-experimental panel data has become one of the most important yet challenging endeavors for social scientists. The difficulty lies in accurately estimating the counterfactual outcomes for the potentially treated units in the absence of treatment. Perhaps the most popular method to estimate average treatment effects is the Difference-in-Differences (DID) method. The key assumption of the DID method is that outcomes of the treated units would have followed a path parallel to the control units in the absence of treatment and violation of this ``parallel lines" assumption will result in biased estimates. This dissertation consists of three essays, which either build on existing methods (essay 1 and 3) or propose a new method (essay 2) that can be used even when the ``parallel lines" assumption of DID does not hold. In essay 1, we derive the asymptotic distribution of the HCW method, which is computationally simple as it only involves least squares regressions. However, in cases where treatment and control units are positively correlated, the HCW method may have less predictive efficiency than other methods such as the synthetic control and modified synthetic control method, which impose the restriction that weights are non-negative. The popular synthetic control method additionally imposes the restriction that the weights sum to one, which can be a helpful regularization condition when there are many control units. In essay 3, we provide the inference theory for both the synthetic control and modified synthetic control method through projection theory and propose a computational algorithm using subsampling to compute the confidence intervals. In order to apply the HCW method, synthetic control method and modified synthetic control method, the number of control units needs to be smaller than the pre-treatment sample size. In essay 2, we propose the augmented DID method, which can be used where there are many treatment and control units, but is less flexible than the three aforementioned methods. In short, this dissertation provides several methods and their inference procedures to identify average treatment effects. Which method should be used when depends on the structure of the data.



Topics In Statistical Inference For Treatment Effects


Topics In Statistical Inference For Treatment Effects
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Author : Yang Jiang
language : en
Publisher:
Release Date : 2017

Topics In Statistical Inference For Treatment Effects written by Yang Jiang and has been published by this book supported file pdf, txt, epub, kindle and other format this book has been release on 2017 with categories.


This thesis unites three papers discussing different approaches for estimating treatment effects, either in observational study or randomized trial. The first paper presents an approach to sensitivity analysis for the instrumental variable (IV) method, which examines the sensitivity of inferences to violations of IV validity. Our approach is based on extending the Anderson-Rubin test and is robust to weak IVs. The second paper presents a unified R software ivmodel for analyzing instrumental variables with one endogenous variable. The package implements a general class of estimators, k-class estimators, and two confidence intervals that are fully robust to weak instruments. The package also provides power formulas. The sensitivity analysis discussed in the first paper is also included in the package. The third paper uses Hidden Markov Model to estimate the dynamic effects of lottery-based incentives towards patient's healthy behavior every day. The data is collected from randomized clinical trials.