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Computing / Semantic Web / Cognitive science / Information science / Knowledge representation / Technical communication / Knowledge engineering / Ontology / Machine learning / Reinforcement learning / Artificial neural network / Gameplay
Date: 2016-07-12 12:05:04
Computing
Semantic Web
Cognitive science
Information science
Knowledge representation
Technical communication
Knowledge engineering
Ontology
Machine learning
Reinforcement learning
Artificial neural network
Gameplay

A Video Game Description Language for Model-based or Interactive Learning Tom Schaul Courant Institute of Mathematical Sciences New York University, 715 Broadway, 10003, New York

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