@article {Perez-Nieves2020.12.18.423468, author = {Nicolas Perez-Nieves and Vincent C. H. Leung and Pier Luigi Dragotti and Dan F. M. Goodman}, title = {Neural heterogeneity promotes robust learning}, elocation-id = {2020.12.18.423468}, year = {2021}, doi = {10.1101/2020.12.18.423468}, publisher = {Cold Spring Harbor Laboratory}, abstract = {The brain has a hugely diverse, heterogeneous structure. Whether or not heterogeneity at the neural level plays a functional role remains unclear, and has been relatively little explored in models which are often highly homogeneous. We compared the performance of spiking neural networks trained to carry out tasks of real-world difficulty, with varying degrees of heterogeneity, and found that it substantially improved task performance. Learning was more stable and robust, particularly for tasks with a rich temporal structure. In addition, the distribution of neuronal parameters in the trained networks closely matches those observed experimentally. We suggest that the heterogeneity observed in the brain may be more than just the byproduct of noisy processes, but rather may serve an active and important role in allowing animals to learn in changing environments.Summary Neural heterogeneity is metabolically efficient for learning, and optimal parameter distribution matches experimental data.Competing Interest StatementThe authors have declared no competing interest.}, URL = {https://www.biorxiv.org/content/early/2021/03/22/2020.12.18.423468}, eprint = {https://www.biorxiv.org/content/early/2021/03/22/2020.12.18.423468.full.pdf}, journal = {bioRxiv} }