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Statistical natural language processing / Machine learning / Artificial intelligence / Learning / Topic model / Causal inference / Latent Dirichlet allocation / Experiment / Mixture model / Unsupervised learning
Date: 2014-03-07 09:26:14
Statistical natural language processing
Machine learning
Artificial intelligence
Learning
Topic model
Causal inference
Latent Dirichlet allocation
Experiment
Mixture model
Unsupervised learning

Structural Topic Models for Open-Ended Survey Responses Margaret E. Roberts University of California, San Diego Brandon M. Stewart Harvard University Dustin Tingley Harvard University Christopher Lucas Harvard University

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