ERLARS 2014 - 7th International Workshop on
Evolutionary and Reinforcement Learning for Autonomous Robot Systems

Call for Papers

Learning is essential for an autonomous robot system. The range of unexpected situations it can handle while performing its task depends on its ability to adapt. Recent developments have taken autonomous robots beyond industrial settings, for example at home as toys and cleaners. However, production models usually interact with their environment following a fixed control strategy, which limits their range of application. More adaptable robots require control strategies that learn more and better from interactions with their environment.
The ERLARS workshop addresses the challenge to develop efficient and versatile learning architectures for autonomous robot systems, with the main focus on adequate evolutionary and reinforcement learning algorithms.
You are hereby cordially invited to submit a paper on your own scientific work in this subject area to the ERLARS 2014 workshop!

Relevant Topics

Papers are invited on all aspects of learning methods for the control of autonomous robot systems, including, but not limited to:

Submission Schedule

(Schedule will be given here soon)

Paper format

All articles will be published both in a proceedings book with an ISSN, as well as online. Please see the authors' section for formatting instructions.

Author of these pages: Nils T Siebel.
Last modified on Sun Jun 1 2014.
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