Credit-Based Self Organizing Maps: Training Deep Topographic Networks with Minimal Performance Degradation
Abstract
In the primate neocortex, neurons with similar function are often found to be spatially close. Kohonen's self-organizing map (SOM) has been one of the most influential approaches for simulating brain-like topographical organization in artificial neural network models. However, integrating these maps into deep neural networks with multitude of layers has been challenging, with self-organized deep neural networks suffering from substantially diminished capacity to perform visual recognition. We identified a key factor leading to the performance degradation in self-organized topographical neural network models: the discord between predominantly bottom-up learning updates in the self-organizing maps, and those derived from top-down, credit-based learning approaches. To address this, we propose an alternative self organization algorithm, tailored to align with the top-down learning processes in deep neural networks. This model not only emulates critical aspects of cortical topography but also significantly narrows the performance gap between non-topographical and topographical models. This advancement underscores the substantial importance of top-down assigned credits in shaping topographical organization. Our findings are a step in reconciling topographical modeling with the functional efficacy of neural network models, paving the way for more brain-like neural architectures.
Cite
Text
Dehghani et al. "Credit-Based Self Organizing Maps: Training Deep Topographic Networks with Minimal Performance Degradation." International Conference on Learning Representations, 2025.Markdown
[Dehghani et al. "Credit-Based Self Organizing Maps: Training Deep Topographic Networks with Minimal Performance Degradation." International Conference on Learning Representations, 2025.](https://mlanthology.org/iclr/2025/dehghani2025iclr-creditbased/)BibTeX
@inproceedings{dehghani2025iclr-creditbased,
title = {{Credit-Based Self Organizing Maps: Training Deep Topographic Networks with Minimal Performance Degradation}},
author = {Dehghani, Amirozhan and Qian, Xinyu and Farahani, Asa and Bashivan, Pouya},
booktitle = {International Conference on Learning Representations},
year = {2025},
url = {https://mlanthology.org/iclr/2025/dehghani2025iclr-creditbased/}
}