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When:
Thursday, May 12, 3:00 p.m.
Where: 1507 Newell-Simon Hall
Michael Bowling, Assistant Professor, University of Alberta, Edmonton, Canada
AI Seminar
Abstract: A map is a key component for a mobile robot. Maps at their core allow the
robot to answer three questions: (1) "where have I been?" (2) "where am I
now?" and (3) "how do I get where I want to go?" A huge body of robotics
research assumes their existence, and another large body of research tries
to build them. But building maps can be time consuming, manually
intensive, and require expert knowledge in the form of detailed models of
the robot's motion and sensor apparatus. In this talk I will show how maps can be learned directly from the robot's subjective experience of
sensations and actions, without any models. I'll introduce a new
algorithm, Action Respecting Embedding (ARE), inspired by kernel-based
dimensionality reduction techniques. ARE extracts a low dimensional
representation of data that also respects the provided action labelling.
The resulting subjective map explicitly encodes the robot's trajectory
(answering question one), and I'll show how it can be used for both
planning (question three) and localization (question two). Although
originally conceived in the context of mobile robots, ARE is a general
technique for extracting representations from a sequence of observations and actions.
Michael Bowling is a professor at the University of Alberta in Edmonton,
Canada. His research focuses on the intersections of machine learning,
games, and robotics. He has been actively involved in the emerging field
of multiagent learning and a long-time participant in the RoboCup robot
soccer initiative. He is now particularly excited about opponent modelling in poker, machine learning for commercial computer games, and robots
learning representations from experience.
Faculty Host: Manuela Veloso
Appointments: nm10@andrew.cmu.edu
Special day/time/location.
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