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Main Authors: Cohen, Laura, Hinaut, Xavier, Petrova, Lilyana, Pitti, Alexandre, Reynal, Syd, Tsuda, Ichiro
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2506.07060
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author Cohen, Laura
Hinaut, Xavier
Petrova, Lilyana
Pitti, Alexandre
Reynal, Syd
Tsuda, Ichiro
author_facet Cohen, Laura
Hinaut, Xavier
Petrova, Lilyana
Pitti, Alexandre
Reynal, Syd
Tsuda, Ichiro
contents Natural intelligence (NI) consistently achieves more with less. Infants learn language, develop abstract concepts, and acquire sensorimotor skills from sparse data, all within tight neural and energy limits. In contrast, today's AI relies on virtually unlimited computational power, energy, and data to reach high performance. This paper argues that constraints in NI are paradoxically catalysts for efficiency, adaptability, and creativity. We first show how limited neural bandwidth promotes concise codes that still capture complex patterns. Spiking neurons, hierarchical structures, and symbolic-like representations emerge naturally from bandwidth constraints, enabling robust generalization. Next, we discuss chaotic itinerancy, illustrating how the brain transits among transient attractors to flexibly retrieve memories and manage uncertainty. We then highlight reservoir computing, where random projections facilitate rapid generalization from small datasets. Drawing on developmental perspectives, we emphasize how intrinsic motivation, along with responsive social environments, drives infant language learning and discovery of meaning. Such active, embodied processes are largely absent in current AI. Finally, we suggest that adopting 'less is more' principles -- energy constraints, parsimonious architectures, and real-world interaction -- can foster the emergence of more efficient, interpretable, and biologically grounded artificial systems.
format Preprint
id arxiv_https___arxiv_org_abs_2506_07060
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle Less is More: some Computational Principles based on Parcimony, and Limitations of Natural Intelligence
Cohen, Laura
Hinaut, Xavier
Petrova, Lilyana
Pitti, Alexandre
Reynal, Syd
Tsuda, Ichiro
Neurons and Cognition
Artificial Intelligence
Natural intelligence (NI) consistently achieves more with less. Infants learn language, develop abstract concepts, and acquire sensorimotor skills from sparse data, all within tight neural and energy limits. In contrast, today's AI relies on virtually unlimited computational power, energy, and data to reach high performance. This paper argues that constraints in NI are paradoxically catalysts for efficiency, adaptability, and creativity. We first show how limited neural bandwidth promotes concise codes that still capture complex patterns. Spiking neurons, hierarchical structures, and symbolic-like representations emerge naturally from bandwidth constraints, enabling robust generalization. Next, we discuss chaotic itinerancy, illustrating how the brain transits among transient attractors to flexibly retrieve memories and manage uncertainty. We then highlight reservoir computing, where random projections facilitate rapid generalization from small datasets. Drawing on developmental perspectives, we emphasize how intrinsic motivation, along with responsive social environments, drives infant language learning and discovery of meaning. Such active, embodied processes are largely absent in current AI. Finally, we suggest that adopting 'less is more' principles -- energy constraints, parsimonious architectures, and real-world interaction -- can foster the emergence of more efficient, interpretable, and biologically grounded artificial systems.
title Less is More: some Computational Principles based on Parcimony, and Limitations of Natural Intelligence
topic Neurons and Cognition
Artificial Intelligence
url https://arxiv.org/abs/2506.07060