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Main Authors: Godin-Dubois, Kevin, Yaman, Anil, Kononova, Anna V.
Format: Preprint
Published: 2026
Subjects:
Online Access:https://arxiv.org/abs/2604.20365
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author Godin-Dubois, Kevin
Yaman, Anil
Kononova, Anna V.
author_facet Godin-Dubois, Kevin
Yaman, Anil
Kononova, Anna V.
contents While Central Pattern Generators (CPGs) and Multi-Layer Perceptrons (MLP) are widely used paradigms in robot control, few systematic studies have been performed on the relative merits of large parameter spaces. In contexts where input and output spaces are small and performance is bounded, having more parameters to optimize may actively hinder the learning process instead of empowering it. To empirically measure this, we submit a given robot morphology, with limited proprioceptive capabilities, to controller optimization under two bio-inspired paradigms (CPGs and MLPs) with evolutionary- and reinforcement- trainer protocols. By varying parameter spaces across multiple reward functions, we observe that shallow MLPs and densely connected CPGs result in better performance when compared to deeper MLPs or Actor-Critic architectures. To account for the relationship between said performance and the number of parameters, we introduce a Parameter Impact metric which demonstrates that the additional parameters required by the reinforcement technique do not translate into better performance, thus favouring evolutionary strategies.
format Preprint
id arxiv_https___arxiv_org_abs_2604_20365
institution arXiv
publishDate 2026
record_format arxiv
spellingShingle Benefits of Low-Cost Bio-Inspiration in the Age of Overparametrization
Godin-Dubois, Kevin
Yaman, Anil
Kononova, Anna V.
Robotics
Artificial Intelligence
While Central Pattern Generators (CPGs) and Multi-Layer Perceptrons (MLP) are widely used paradigms in robot control, few systematic studies have been performed on the relative merits of large parameter spaces. In contexts where input and output spaces are small and performance is bounded, having more parameters to optimize may actively hinder the learning process instead of empowering it. To empirically measure this, we submit a given robot morphology, with limited proprioceptive capabilities, to controller optimization under two bio-inspired paradigms (CPGs and MLPs) with evolutionary- and reinforcement- trainer protocols. By varying parameter spaces across multiple reward functions, we observe that shallow MLPs and densely connected CPGs result in better performance when compared to deeper MLPs or Actor-Critic architectures. To account for the relationship between said performance and the number of parameters, we introduce a Parameter Impact metric which demonstrates that the additional parameters required by the reinforcement technique do not translate into better performance, thus favouring evolutionary strategies.
title Benefits of Low-Cost Bio-Inspiration in the Age of Overparametrization
topic Robotics
Artificial Intelligence
url https://arxiv.org/abs/2604.20365