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Hierarchical Stochastic Differential Equation Models for Latent Manifold Learning in Neural Time Series

Hierarchical Stochastic Differential Equation Models for Latent Manifold Learning in Neural Time Series

来源:Arxiv_logoArxiv
英文摘要

The manifold hypothesis suggests that high-dimensional neural time series lie on a low-dimensional manifold shaped by simpler underlying dynamics. To uncover this structure, latent dynamical variable models such as state-space models, recurrent neural networks, neural ordinary differential equations, and Gaussian Process Latent Variable Models are widely used. We propose a novel hierarchical stochastic differential equation (SDE) model that balances computational efficiency and interpretability, addressing key limitations of existing methods. Our model assumes the trajectory of a manifold can be reconstructed from a sparse set of samples from the manifold trajectory. The latent space is modeled using Brownian bridge SDEs, with points - specified in both time and value - sampled from a multivariate marked point process. These Brownian bridges define the drift of a second set of SDEs, which are then mapped to the observed data. This yields a continuous, differentiable latent process capable of modeling arbitrarily complex time series as the number of manifold points increases. We derive training and inference procedures and show that the computational cost of inference scales linearly with the length of the observation data. We then validate our model on both synthetic data and neural recordings to demonstrate that it accurately recovers the underlying manifold structure and scales effectively with data dimensionality.

Pedram Rajaei、Maryam Ostadsharif Memar、Navid Ziaei、Behzad Nazari、Ali Yousefi

计算技术、计算机技术数学

Pedram Rajaei,Maryam Ostadsharif Memar,Navid Ziaei,Behzad Nazari,Ali Yousefi.Hierarchical Stochastic Differential Equation Models for Latent Manifold Learning in Neural Time Series[EB/OL].(2025-07-29)[2025-08-11].https://arxiv.org/abs/2507.21531.点此复制

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