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Learning / Education / Human behavior / Educational psychology / Educational practices / Philosophy of education / Curricula / Bayesian network / Active learning / Question / Bayesian inference / Machine learning
Date: 2016-05-13 20:53:50
Learning
Education
Human behavior
Educational psychology
Educational practices
Philosophy of education
Curricula
Bayesian network
Active learning
Question
Bayesian inference
Machine learning

Asking and evaluating natural language questions Anselm Rothe1 , Brenden M. Lake2 , and Todd M. Gureckis1 1 Department of Psychology, 2 Center for Data Science, New York University

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Source URL: cims.nyu.edu

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File Size: 1,06 MB

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