Dynamics of specialization in neural modules under resource constraints
Gabriel B\'ena, Dan F. M. Goodman

TL;DR
This study investigates how environmental features and resource constraints influence the emergence of functional specialization in neural networks, challenging the idea that structural modularity alone guarantees specialization.
Contribution
The paper systematically demonstrates that environmental separability and resource constraints are key factors for specialization, and highlights the dynamic nature of functional specialization over time.
Findings
Specialization emerges only with meaningful environmental separability.
Resource constraints promote the development of specialization.
Functional specialization varies dynamically with information flow.
Abstract
It has long been believed that the brain is highly modular both in terms of structure and function, although recent evidence has led some to question the extent of both types of modularity. We used artificial neural networks to test the hypothesis that structural modularity is sufficient to guarantee functional specialization, and find that in general, this doesn't necessarily hold. We then systematically tested which features of the environment and network do lead to the emergence of specialization. We used a simple toy environment, task and network, allowing us precise control, and show that in this setup, several distinct measures of specialization give qualitatively similar results. We further find that in this setup (1) specialization can only emerge in environments where features of that environment are meaningfully separable, (2) specialization preferentially emerges when the…
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Taxonomy
TopicsNeural dynamics and brain function · Advanced Memory and Neural Computing · Functional Brain Connectivity Studies
