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Metaphysics / Mathematics / Applied mathematics / Computational neuroscience / Graph theory / Artificial neural network / Market research / Mathematical psychology / Bayesian network / Causality / Graph rewriting / Motion planning
Date: 2017-05-18 12:57:06
Metaphysics
Mathematics
Applied mathematics
Computational neuroscience
Graph theory
Artificial neural network
Market research
Mathematical psychology
Bayesian network
Causality
Graph rewriting
Motion planning

Robot Learning with a Spatial, Temporal, and Causal And-Or Graph Caiming Xiong∗ , Nishant Shukla∗ , Wenlong Xiong, and Song-Chun Zhu Abstract— We propose a stochastic graph-based framework for a robot to understand

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