Hyperbolic geometry and information acquisition in biological systems

ORAL · Invited

Abstract

Across different scales of biological organization, biological networks often exhibit hierarchical tree-like organization. For networks with such structure, hyperbolic geometry provides a natural metric because of its exponentially expanding resolution. I will describe how the use of hyperbolic geometry can be helpful for visualizing and analyzing information acquisition and learning process from across biology, from viruses, to plants and animals, including the brain. We find that local noise causes data to exhibit Euclidean geometry on small scales, but that at broader scales hyperbolic geometry becomes visible and pronounced. The hyperbolic maps are typically larger for datasets of more diverse and differentiated cells, e.g. with a range of ages. We find that adding a constraint on large distances according to hyperbolic geometry improves the performance of t-SNE algorithm to a large degree causing it to outperform other leading methods, such as UMAP and standard t-SNE. For neural responses, I will describe data showing that neural responses in the hippocampus have a low-dimensional hyperbolic geometry and that their hyperbolic size is optimized for the number of available neurons. It was also possible to analyze how neural representations change with experience. In particular, neural representations continued to be described by a low-dimensional hyperbolic geometry but the radius increased logarithmically with time. This time dependence matches the maximal rate of information acquisition by a maximum entropy discrete Poisson process, further implying that neural representations continue to perform optimally as they change with experience.

* AHA-Allen Initiative in Brain Health and Cognitive Impairment award made jointly through the American Heart Association and the Paul G. Allen Frontiers Group (19PABH134610000); National Science Foundation (NSF) grant IIS-1724421; the NSF Next Generation Networks for Neuroscience Program (award 2014217); National Institutes of Health grants U19NS112959 and P30AG068635.

Publication: Zhou, Smith, and Sharpee, Science Advances 2018, published
Zhou and Sharpee iScience 2021, published
Zhou and Sharpee Neural Computation 2022, published
Zhang, Rich, Lee, and Sharpee, Nature Neuroscience 2023, published
Praturu and Sharpee, bioarxiv, submitted

Presenters

  • Tatyana O Sharpee

    Salk Inst

Authors

  • Tatyana O Sharpee

    Salk Inst