Perhaps the best known use of modern techniques for optimization in observational studies is within matching algorithms, wherein treated units are placed into matched sets with similar control units to adjust for overt biases. While the intuitive appeal of matching has been long understood, its ascent in popularity can be attributed in large part to computational advances in network flow optimization. This dissertation explores how modern optimization can be leveraged to address other problems in observational studies. First, we demonstrate how, in the absence of covariate overlap, the maximal box problem can be used to define an interpretable study population wherein inference can be conducted without extrapolating on important variables. ...
This thesis is organized around four papers that present and illustrate new methods for optimal desi...
This thesis is organized around four papers that present and illustrate new methods for optimal desi...
This thesis unites three papers discussing new strategies for matched pair designs using observation...
Perhaps the best known use of modern techniques for optimization in observational studies is within ...
Perhaps the best known use of modern techniques for optimization in observational studies is within ...
Perhaps the best known use of modern techniques for optimization in observational studies is within ...
Many traditional and newly-developed causal inference approaches require imposing strong data assump...
Many traditional and newly-developed causal inference approaches require imposing strong data assump...
This thesis unites three papers discussing new strategies for matched pair designs using observation...
Observational data are prevalent in many fields of research, and it is desirable to use this data to...
Matching is a common approach to reduce bias in observed covariates to draw reliable causal inferenc...
Causal inference with observational data has drawn attention across various fields. These observatio...
Optimization has been an important tool in statistics for a long time. For example, the problem of p...
Observational data are prevalent in many fields of research, and it is desirable to use this data to...
In recent years, the optimization, statistics and machine learning communities have built momentum i...
This thesis is organized around four papers that present and illustrate new methods for optimal desi...
This thesis is organized around four papers that present and illustrate new methods for optimal desi...
This thesis unites three papers discussing new strategies for matched pair designs using observation...
Perhaps the best known use of modern techniques for optimization in observational studies is within ...
Perhaps the best known use of modern techniques for optimization in observational studies is within ...
Perhaps the best known use of modern techniques for optimization in observational studies is within ...
Many traditional and newly-developed causal inference approaches require imposing strong data assump...
Many traditional and newly-developed causal inference approaches require imposing strong data assump...
This thesis unites three papers discussing new strategies for matched pair designs using observation...
Observational data are prevalent in many fields of research, and it is desirable to use this data to...
Matching is a common approach to reduce bias in observed covariates to draw reliable causal inferenc...
Causal inference with observational data has drawn attention across various fields. These observatio...
Optimization has been an important tool in statistics for a long time. For example, the problem of p...
Observational data are prevalent in many fields of research, and it is desirable to use this data to...
In recent years, the optimization, statistics and machine learning communities have built momentum i...
This thesis is organized around four papers that present and illustrate new methods for optimal desi...
This thesis is organized around four papers that present and illustrate new methods for optimal desi...
This thesis unites three papers discussing new strategies for matched pair designs using observation...