Abstract
AbstractRecent work has argued that large-scale neural recordings are often well described by low-dimensional ‘latent’ dynamics identified using dimensionality reduction. However, the view that task-relevant variability is shared across neurons misses other types of structure underlying behavior, including stereotyped neural sequences or slowly evolving latent spaces. To address this, we introduce a new framework that simultaneously accounts for variability that is shared across neurons, trials, or time. To identify and demix these covariability classes, we develop a new unsupervised dimensionality reduction method for neural data tensors called sliceTCA. In three example datasets, including motor cortical dynamics during a classic reaching task and recent multi-region recordings from the International Brain Laboratory, we show that sliceTCA can capture more task-relevant structure in neural data using fewer components than traditional methods. Overall, our theoretical framework extends the classic view of low-dimensional population activity by incorporating additional classes of latent variables capturing higher-dimensional structure.
Publisher
Cold Spring Harbor Laboratory
Reference60 articles.
1. Brain-wide neuronal dynamics during motor adaptation in zebrafish
2. R. Amo , S. Matias , A. Yamanaka , K. F. Tanaka , N. Uchida , and M. Watabe-Uchida A gradual temporal shift of dopamine responses mirrors the progression of temporal difference error in machine learning. Nature Neuroscience, pages 1–11, 2022.
3. The Isomap Algorithm and Topological Stability
4. E. Balzani , J. P. Noel , P. Herrero-Vidal , D. E. Angelaki , and C. Savin . A probabilistic framework for task-aligned intra-and inter-area neural manifold estimation, 2022. URL https://arxiv.org/abs/2209.02816.
5. Laplacian Eigenmaps for Dimensionality Reduction and Data Representation
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