The knockoff filter is a variable selection technique for linear regression with finite-sample control of the regression false discovery rate (FDR). The regression FDR is the expected proportion of selected variables which, in fact, have no effect in the regression model. The knockoff filter constructs a set of synthetic variables which are known to be irrelevant to the regression and, by serving as negative controls, help identify relevant variables. The first two thirds of this thesis describe tradeoffs between power and collinearity due to tuning choices in the knockoff filter and provide a stabilization method to reduce variance and improve replicability of the selected variable set using the knockoff filter. The final third of this the...
Sequential multiple assignment randomization trial (SMART) is a powerful design to study Dynamic Tre...
In typical political experiments, researchers randomize a set of households, precincts, or individua...
An adaptive treatment strategy (ATS) is an outcome-guided algorithm that allows personalized treatme...
Clinicians and researchers alike are increasingly interested in how best to personalize intervention...
This dissertation investigates two methodological problems. The first problem concerns developing an...
We propose the Terminating-Knockoff (T-Knock) filter, a fast variable selection method for high-dime...
In this paper, we argue that causal effect models for realistic individualized treatment rules repre...
In many fields of science, we observe a response variable together with a large number of potential ...
Multiple comparisons and selection procedures are commonly studied in research and employed in appli...
This dissertation studies identification, estimation, inference and experimental design for analyzin...
In many applications, we need to study a linear regression model that consists of a response variabl...
Indiana University-Purdue University Indianapolis (IUPUI)Randomized studies are designed to estimate...
We present a novel method for controlling the k-familywise error rate (k-FWER) in the linear regress...
Thesis (Ph.D.)--University of Washington, 2021This dissertation comprises three projects that span t...
Dynamic treatment regimes (DTRs) are sequences of decision rules that link the patient history with ...
Sequential multiple assignment randomization trial (SMART) is a powerful design to study Dynamic Tre...
In typical political experiments, researchers randomize a set of households, precincts, or individua...
An adaptive treatment strategy (ATS) is an outcome-guided algorithm that allows personalized treatme...
Clinicians and researchers alike are increasingly interested in how best to personalize intervention...
This dissertation investigates two methodological problems. The first problem concerns developing an...
We propose the Terminating-Knockoff (T-Knock) filter, a fast variable selection method for high-dime...
In this paper, we argue that causal effect models for realistic individualized treatment rules repre...
In many fields of science, we observe a response variable together with a large number of potential ...
Multiple comparisons and selection procedures are commonly studied in research and employed in appli...
This dissertation studies identification, estimation, inference and experimental design for analyzin...
In many applications, we need to study a linear regression model that consists of a response variabl...
Indiana University-Purdue University Indianapolis (IUPUI)Randomized studies are designed to estimate...
We present a novel method for controlling the k-familywise error rate (k-FWER) in the linear regress...
Thesis (Ph.D.)--University of Washington, 2021This dissertation comprises three projects that span t...
Dynamic treatment regimes (DTRs) are sequences of decision rules that link the patient history with ...
Sequential multiple assignment randomization trial (SMART) is a powerful design to study Dynamic Tre...
In typical political experiments, researchers randomize a set of households, precincts, or individua...
An adaptive treatment strategy (ATS) is an outcome-guided algorithm that allows personalized treatme...