Item Details

Topic Modeling for the Social Sciences ontoligent 2017-11-27T14:28:59Z 2017-11-27T14:31:48Z FSGTQ8QI 4733 conferencePaper Ramage et al. 2009 2
Type Conference Paper
Author Daniel Ramage
Author Evan Rosen
Author Jason Chuang
Author Christopher D. Manning
Author Daniel A. McFarland
Date 2009
Accessed 2017-11-27 14:28:59
Conference Name Workshop on Applications for Topic Models, NIPS 2009
Abstract As textual datasets grow in size and scope, social scientists need better tools to help make sense of that data. Despite the natural applicability of topic modeling to many such problems, word counts and tag clouds are often used as the primary means of gleaning information from textual data. We characterize two barriers to adoption encountered during a collaboration between the Stanford NLP group and social scientists in the school of education: accessibility and trust. Accessibility refers to the technical barriers that make text processing and topic modeling difficult. Trust comes when practitioners can explore and validate a model being used to discover or support a hypothesis. We introduce recent work aimed at solving these challenges including the Stanford Topic Modeling Toolbox software.