This collection of three papers develops two statistical techniques for addressing canonical problems in applied computational social science: unsupervised text analysis and regression with dependent data. In both cases I provide a flexible framework that allows the analyst to leverage known structure within the data to improve inference. The first paper introduces the Structural Topic Model (STM) which generalizes and extends a broad class of probabilistic topic models developed in computer science. Crucially for applied social science, STM provides a framework for estimating the factors which drive topical frequency and content within documents. The second paper explores the challenge that non-convex likelihoods pose for applied resea...
This dissertation presents three independent research projects with the common goal of analyzing and...
Social sciences offer particular challenges to statistics due to difficulties such as conducting ran...
This paper addresses the problem of scientific research analysis. We use the topic model Latent Diri...
This thesis presents five independent essays that advance causal inference in political science. It ...
Text has always been an important data source in political science. What has changed in recent years...
Political science as a field prioritizes causal statements: the effects of governmental policies on ...
This special volume of the Journal of Statistical Software on political methodology includes 14 pape...
This special volume of the Journal of Statistical Software on political methodology includes 14 pape...
I present three political science examples of observational studies where modern causal inferences t...
This dissertation is intended as a collection of essays which explore innovations in the development...
Thesis (Ph.D.)--University of Washington, 2019Computational methods provide novel and important appr...
This dissertation is composed of three papers on interpersonal political communication. In the first...
This paper reviews the logic of attempts to automate the processes involved in computer-assisted tex...
In recent years, political science has witnessed an explosion of data. Political scientists have beg...
Drawing on the authors’ varied experiences working and teaching in the field, Analysis of Multivaria...
This dissertation presents three independent research projects with the common goal of analyzing and...
Social sciences offer particular challenges to statistics due to difficulties such as conducting ran...
This paper addresses the problem of scientific research analysis. We use the topic model Latent Diri...
This thesis presents five independent essays that advance causal inference in political science. It ...
Text has always been an important data source in political science. What has changed in recent years...
Political science as a field prioritizes causal statements: the effects of governmental policies on ...
This special volume of the Journal of Statistical Software on political methodology includes 14 pape...
This special volume of the Journal of Statistical Software on political methodology includes 14 pape...
I present three political science examples of observational studies where modern causal inferences t...
This dissertation is intended as a collection of essays which explore innovations in the development...
Thesis (Ph.D.)--University of Washington, 2019Computational methods provide novel and important appr...
This dissertation is composed of three papers on interpersonal political communication. In the first...
This paper reviews the logic of attempts to automate the processes involved in computer-assisted tex...
In recent years, political science has witnessed an explosion of data. Political scientists have beg...
Drawing on the authors’ varied experiences working and teaching in the field, Analysis of Multivaria...
This dissertation presents three independent research projects with the common goal of analyzing and...
Social sciences offer particular challenges to statistics due to difficulties such as conducting ran...
This paper addresses the problem of scientific research analysis. We use the topic model Latent Diri...