Political scientists often find themselves analyzing datasets with a large number of observations, a large number of variables, or both. Yet, traditional statistical techniques fail to take full advantage of the opportunities inherent in ``big data'' as they are too rigid to recover nonlinearities and do not facilitate the easy exploration of interactions in high-dimensional datasets. In this paper, we introduce a family of tree-based nonparametric techniques that may, in some circumstances, be more appropriate than traditional methods for confronting these data challenges. In particular, tree models are very effective for detecting nonlinearities and interactions, even in datasets with many (potentially irrelevant) covariates. We introduce...
Panel data are a very valuable resource for finding empirical solutions to political science puzzles...
<p>Social science data often contain complex characteristics that standard statistical methods fail ...
Political campaigning has become a multi-million dollar business. A substantial pro-portion of a cam...
Political scientists often find themselves analyzing datasets with a large number of ob-servations, ...
Political science as a field prioritizes causal statements: the effects of governmental policies on ...
"Politimetrics" (Gurr 1972), "polimetrics" (Alker 1975), "politometrics" (Hilton 1976), "political a...
When committing to quantitative political science, a researcher has a wealth of methods to choose fr...
Political scientists increasingly use causal graphs, specifically directed acyclic graphs (DAGs), to...
Replication code and data for: Lenka Bustikova, David Siroky, Saud Alashri, Sultan Alzahrani. Predic...
Political scientists often argue that political processes move together in the long run. Examples in...
This collection of three papers develops two statistical techniques for addressing canonical problem...
This dissertation provides three novel methodologies to the field of political science. In the fir...
Questions of causation are important issues in empirical research on political behavior. Most of the...
The material here contains the data we used in our book. Additionally, we have all the batch files w...
Political science data often contain grouped observations, which produces unobserved "cluster effect...
Panel data are a very valuable resource for finding empirical solutions to political science puzzles...
<p>Social science data often contain complex characteristics that standard statistical methods fail ...
Political campaigning has become a multi-million dollar business. A substantial pro-portion of a cam...
Political scientists often find themselves analyzing datasets with a large number of ob-servations, ...
Political science as a field prioritizes causal statements: the effects of governmental policies on ...
"Politimetrics" (Gurr 1972), "polimetrics" (Alker 1975), "politometrics" (Hilton 1976), "political a...
When committing to quantitative political science, a researcher has a wealth of methods to choose fr...
Political scientists increasingly use causal graphs, specifically directed acyclic graphs (DAGs), to...
Replication code and data for: Lenka Bustikova, David Siroky, Saud Alashri, Sultan Alzahrani. Predic...
Political scientists often argue that political processes move together in the long run. Examples in...
This collection of three papers develops two statistical techniques for addressing canonical problem...
This dissertation provides three novel methodologies to the field of political science. In the fir...
Questions of causation are important issues in empirical research on political behavior. Most of the...
The material here contains the data we used in our book. Additionally, we have all the batch files w...
Political science data often contain grouped observations, which produces unobserved "cluster effect...
Panel data are a very valuable resource for finding empirical solutions to political science puzzles...
<p>Social science data often contain complex characteristics that standard statistical methods fail ...
Political campaigning has become a multi-million dollar business. A substantial pro-portion of a cam...