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Learning complex motions by sequencing simpler motion templates

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conference contribution
posted on 2024-02-09, 17:42 authored by J. Peters, W. Maass, Gerhard Neumann

Abstraction of complex, longer motor tasks into simpler elemental movements enables humans and animals to exhibit motor skills which have not yet been matched by robots. Humans intuitively decompose complex motions into smaller, simpler segments. For example when describing simple movements like drawing a triangle with a pen, we can easily name the basic steps of this movement.Surprisingly, such abstractions have rarely been used in artificial motor skill learning algorithms. These algorithms typically choose a new action (such as a torque or a force) at a very fast time-scale. As a result, both policy and temporal credit assignment problem become unnecessarily complex - often beyond the reach of current machine learning methods.We introduce a new framework for temporal abstractions in reinforcement learning (RL), i.e. RL with motion templates. We present a new algorithm for this framework which can learn high-quality policies by making only few abstract decisions.

History

School affiliated with

  • School of Computer Science (Research Outputs)

Publication Title

Proceedings of the 26th International Conference On Machine Learning, ICML 2009

ISBN

9781605585161

Date Submitted

2017-02-24

Date Accepted

2009-06-18

Date of First Publication

2009-06-18

Date of Final Publication

2009-06-18

Event Name

26th Annual International Conference on Machine Learning (ICML 2009)

Event Dates

14-18 June 2009

Date Document First Uploaded

2017-01-12

ePrints ID

25795

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