Justin Grimmer, Margaret E. Roberts, Brandon M Stewart
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Machine Learning for Social Science: An Agnostic Approach
Social scientists are now in an era of data abundance, and machine learning tools are increasingly used to extract meaning from data sets both massive and small. We explain how the inclusion of mac...
期刊介绍:
The Annual Review of Political Science has been published since 1998 to provide comprehensive coverage of critical advancements in the field. It encompasses a wide range of subjects within Political Science, such as political theory and philosophy, international relations, political economy, political behavior, American and comparative politics, public administration and policy, and methodology.