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Machine learning / Artificial intelligence / Statistics / Learning / Statistical classification / Support vector machine / Apprenticeship learning / Artificial neural network / Loss function / Motion planning / Reinforcement learning / Robotics
Date: 2016-02-18 10:52:35
Machine learning
Artificial intelligence
Statistics
Learning
Statistical classification
Support vector machine
Apprenticeship learning
Artificial neural network
Loss function
Motion planning
Reinforcement learning
Robotics

SHIV: Reducing Supervisor Burden in DAgger using Support Vectors for Efficient Learning from Demonstrations in High Dimensional State Spaces Michael Laskey1 , Sam Staszak1 , Wesley Yu-Shu Hsieh1 , Jeffrey Mahler1 , Flori

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Source URL: goldberg.berkeley.edu

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