Khan Tanu, Tanvir Ahmed2020-08-272020-08-2720202020-08-27http://hdl.handle.net/1828/12034Regression discontinuity designs are increasingly popular quasi-experimental research designs among applied econometricians desiring to make causal inferences on the local effect of a treatment, intervention, or policy. They are also widely used in social, behavioral, and natural sciences. Much of the existing literature relies on the assumption that the discontinuity point or cutoff is known a-priori, which may not always hold. This thesis seeks to extend the applicability of regression discontinuity designs by proposing a new approach towards detection of an unknown discontinuity point using structural-break detection and machine learning methods. The approach is evaluated on both simulated and real data. Estimation and inference based on estimating the cutoff following this approach are compared to the counterfactual scenario where the cutoff is known. Monte Carlo simulations show that the empirical false-detection and true-detection probabilities of the proposed procedure are generally satisfactory. Finally, the approach is further illustrated with an empirical application.enAvailable to the World Wide WebRegression Discontinuity DesignRDDApplied EconometricsEconometricsTime SeriesStructural Break DetectionTipping Point DetectionRDDsRKDRKDsRegression Discontinuity DesignsMachine LearningRegression discontinuity design with unknown cutoff: cutoff detection & effect estimationThesis