CLAUDIA NOACK

 

Claudia Noack
 

 

 

Welcome to my webpage!

I am an Assistant Professor at the University of Bonn, Germany. My research interests lie in Econometrics and especially in Causal Inference and Nonparametric Econometrics. I received my Ph.D. in Economics from the University of Mannheim and I was a postdoctoral fellow at Nuffield College and the Department of Economics of the University of Oxford.

Email: cnoack[at]uni-bonn.de

You can download my CV here.

Claudia Noack
 
 

 

 

 

 

 

Publications

Bias-Aware Inference in Fuzzy Regression Discontinuity Designs with Christoph Rothe.
accepted for publication, Econometrica [] [arxiv] [R software]

The confidence intervals (CIs) commonly reported in empirical fuzzy regression discontinuity studies are justified by theoretical arguments which assume that the running variable is continuously distributed with positive density around the cutoff, and that the jump in treatment probabilities at the cutoff is “large”. In this paper, we provide new confidence sets (CSs) that do not rely on such assumptions. Their construction is analogous to that of Anderson-Rubin CSs in the literature on instrumental variable models. Our CSs are based on local linear regression, and are bias-aware, in the sense that they explicitly take the possible smoothing bias into account. They are valid under a wide range of empirically relevant conditions in which existing CIs generally fail. These conditions include discrete running variables, donut designs, and weak identification. But our CS also perform favorably relative to existing CIs in the canonical setting with a continuous running variable, and can thus be used in all fuzzy regression discontinuity applications.

 

Working Papers

Sensitivity Analysis of LATE Estimates to a Violation of the Monotonicity Assumption.
July 2021 [] [arxiv]

This paper presents a method to assess the sensitivity of treatment effect estimates to potential violations of the monotonicity assumption. I propose a model in which the degree to which monotonicity is violated is measured by two sensitivity parameters: One determines the population size of defiers and the other treatment effect heterogeneity between compliers and defiers. I identify the breakdown frontier, which is the set of sensitivity parameters that imply the weakest assumptions, which are necessary to draw a particular empirical conclusion, e.g. the average treatment effect is positive. Evaluating the plausibility of these parameters allows researchers to assess the credibility of this conclusion. I show how to conduct inference on these parameter estimates, where confidence sets are obtained through a bootstrap method. The performance of the breakdown frontier estimator is evaluated in a Monte Carlo study and illustrated in an empirical example.

Flexible Covariate Adjustments in Regression Discontinuity Designs with Tomasz Olma and Christoph Rothe.
May 2023, under revision [] [arxiv]

Empirical regression discontinuity (RD) studies often use covariates to increase the precision of their estimates. In this paper, we propose a novel class of estimators that use such covariate information more efficiently than existing methods and can accommodate many covariates. It involves running a standard RD analysis in which a function of the covariates has been subtracted from the original outcome variable. We characterize the function that leads to the estimator with the smallest asymptotic variance, and consider feasible versions of such estimators in which this function is estimated, for example, through modern machine learning techniques.

Donut Regression Discontinuity Designs with Christoph Rothe.
August 2023, preliminary [] [arxiv]

We study the econometric properties of so-called donut regression discontinuity (RD) designs, a robustness exercise which involves repeating estimation and inference without the data points in some area around the treatment threshold. This approach is often motivated by concerns that possible systematic sorting of units, or similar data issues, in some neighborhood of the treatment threshold might distort estimation and inference of RD treatment effects. We show that donut RD estimators can have substantially larger bias and variance than contentional RD estimators, and that the corresponding confidence intervals can be substantially longer. We also provide a formal testing framework for comparing donut and conventional RD estimation results.