A developmental approach for training deep belief networks
Matteo Zambra, Alberto Testolin, Marco Zorzi

TL;DR
This paper introduces iDBN, an iterative learning algorithm for deep belief networks that enables joint layer updates, facilitating the modeling of cognitive development and internal representation maturation.
Contribution
The paper presents iDBN, a novel iterative training method for DBNs that allows holistic network learning and better simulates neurocognitive development processes.
Findings
iDBN achieves comparable performance to greedy training methods.
It enables analysis of internal representation development.
Potential for application in continual learning scenarios.
Abstract
Deep belief networks (DBNs) are stochastic neural networks that can extract rich internal representations of the environment from the sensory data. DBNs had a catalytic effect in triggering the deep learning revolution, demonstrating for the very first time the feasibility of unsupervised learning in networks with many layers of hidden neurons. These hierarchical architectures incorporate plausible biological and cognitive properties, making them particularly appealing as computational models of human perception and cognition. However, learning in DBNs is usually carried out in a greedy, layer-wise fashion, which does not allow to simulate the holistic maturation of cortical circuits and prevents from modeling cognitive development. Here we present iDBN, an iterative learning algorithm for DBNs that allows to jointly update the connection weights across all layers of the model. We…
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Taxonomy
TopicsDomain Adaptation and Few-Shot Learning · Neural dynamics and brain function · Face Recognition and Perception
