Towards a Model of Temporal Attention for On-line Learning in a Mobile Robot

Yuval Marom and Gillian Hayes

Abstract

We present a simple attention system, capable of bottom-up signal detection adaptive to subjective internal needs. The system is used by a robotic agent, learning to perform phototaxis and obstacle avoidance by following a teacher agent around a simulated environment, and deciding when to form associations between perceived information and imitated actions. We refer to this kind of decision-making as on-line temporal attention. The main role of the attention system is perception of change; the system is regulated through feedback about cognitive effort. We show how different levels of effort affect both the ability to learn a task, and to execute it.


Due to copyright, the preprint is not available on-line. You can request a copy by e-mailing me.