Evolved Developmental Artificial Neural Networks for Multitasking with Advanced Activity Dependence
Yintong Zhang, Jason A. Yoder

TL;DR
This paper introduces advanced activity dependence in evolved developmental neural networks, significantly improving multitasking capabilities and environmental adaptability by regulating neural parameters like health, position, and bias.
Contribution
It extends activity dependence in developmental ANNs, demonstrating notable performance improvements in multitasking and environmental regulation.
Findings
Enhanced neural parameter control via activity dependence
Improved multitasking performance in evolved ANNs
Potential for better environmental adaptability
Abstract
Recently, Cartesian Genetic Programming has been used to evolve developmental programs to guide the formation of artificial neural networks (ANNs). This approach has demonstrated success in enabling ANNs to perform multiple tasks while avoiding catastrophic forgetting. One unique aspect of this approach is the use of separate developmental programs evolved to regulate the development of separate soma and dendrite units. An opportunity afforded by this approach is the ability to incorporate Activity Dependence (AD) into the model such that environmental feedback can help to regulate the behavior of each type of unit. Previous work has shown a limited version of AD (influencing neural bias) to provide marginal improvements over non-AD ANNs. In this work, we present promising results from new extensions to AD. Specifically, we demonstrate a more significant improvement via AD on new neural…
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Taxonomy
TopicsEEG and Brain-Computer Interfaces
