Behavioural Plasticity Can Help Evolving Agents in Dynamic Environments but at the Cost of Volatility

Author:

Barnes Chloe M.1,Ekárt Anikó1,Ellefsen Kai Olav2,Glette Kyrre2,Lewis Peter R.3,Tørresen Jim2

Affiliation:

1. Aston University, Birmingham, United Kingdom

2. University of Oslo, Oslo, Norway

3. Ontario Tech University, Oshawa, Canada

Abstract

Neural networks have been widely used in agent learning architectures; however, learnings for one task might nullify learnings for another. Behavioural plasticity enables humans and animals alike to respond to environmental changes without degrading learned knowledge; this can be achieved by regulating behaviour with neuromodulation—a biological process found in the brain. We demonstrate that by modulating activity-propagating signals, neurally trained agents evolving to solve tasks in dynamic environments that are prone to change can expect a significantly higher fitness than non-modulatory agents and also achieve their goals more often. Further, we show that while behavioural plasticity can help agents to achieve goals in these variable environments, this ability to overcome environmental changes with greater success comes at the cost of highly volatile evolution.

Funder

Research Council of Norway through its Centres of Excellence scheme

Publisher

Association for Computing Machinery (ACM)

Subject

Software,Computer Science (miscellaneous),Control and Systems Engineering

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