Authors
Diego Vidaurre, Nick Y Larsen, Laura Masaracchia, Lenno RP T Ruijters, Sonsoles Alonso, Christine Ahrends, Mark W Woolrich
Publication date
2023/12/12
Journal
arXiv preprint arXiv:2312.07151
Description
We propose the Gaussian-Linear Hidden Markov model (GLHMM), a generalisation of different types of HMMs commonly used in neuroscience. In short, the GLHMM is a general framework where linear regression is used to flexibly parameterise the Gaussian state distribution, thereby accommodating a wide range of uses -including unsupervised, encoding and decoding models. GLHMM is implemented as a Python toolbox with an emphasis on statistical testing and out-of-sample prediction -i.e. aimed at finding and characterising brain-behaviour associations. The toolbox uses a stochastic variational inference approach, enabling it to handle large data sets at reasonable computational time. Overall, the approach can be applied to several data modalities, including animal recordings or non-brain data, and applied over a broad range of experimental paradigms. For demonstration, we show examples with fMRI, electrocorticography, magnetoencephalo-graphy and pupillometry.
Scholar articles
D Vidaurre, NY Larsen, L Masaracchia, LRPT Ruijters… - arXiv preprint arXiv:2312.07151, 2023