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- JULY 2009 | VOL. 52 | NO. 7 | communications of the acm 97 In apprenticeship learning, we assume that an expert is
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- Machine Learning, 27, 750 (1997) c 1997 Kluwer Academic Publishers. Manufactured in The Netherlands.
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- ShiftInvariant Sparse Coding for Audio Classification Roger Grosse
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- Journal of Machine Learning Research 7 (2006) 17431788 Submitted 11/05; Revised 4/06; Published 8/06 Learning Factor Graphs in Polynomial Time and Sample Complexity
- Constructing Informative Priors using Transfer Learning Rajat Raina rajatr@cs.stanford.edu
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- Exploration and Apprenticeship Learning in Reinforcement Learning Pieter Abbeel PABBEEL@CS.STANFORD.EDU
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- 3-D Depth Reconstruction from a Single Still Image Ashutosh Saxena, Sung H. Chung, Andrew Y. Ng
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- Learning Omnidirectional Path Following Using Dimensionality Reduction
- Portable GPS Baseband Logging Morgan Quigley, Stanford University
- Robotic Grasping of Novel Objects Ashutosh Saxena, Justin Driemeyer, Justin Kearns, Andrew Y. Ng
- Peripheral-Foveal Vision for Real-time Object Recognition and Tracking in Video Stephen Gould, Joakim Arfvidsson, Adrian Kaehler, Benjamin Sapp, Marius Messner,
- Learning to Grasp Novel Objects using Vision Ashutosh Saxena, Justin Driemeyer, Justin Kearns, Chioma Osondu, Andrew Y. Ng
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