A TOOLBOX FOR ROBUST ESTIMATES OF MULTIVARIATE INFORMATION FROM NEURAL DATA
Institute for Neural Information Processing, Center for Molecular Neurobiology (ZMNH), University Medical Center Hamburg-Eppendorf (UKE)
Presentation
Date TBA
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Poster Board
PS05-09AM-017
Poster
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We built MINT, an open-source toolbox for multivariate information analysis (Lorenz et al., PLoS Comput. Biol. 21, e1012934 (2025)), which provides state-of-the-art tools including partial information decomposition (PID), Transfer Entropy, Feature Specific Information Transfer, Intersection Information. PID disentangles synergistic, independent, and redundant information contributions. While limited-sampling biases are well known for Shannon information measures, their impact on PID remains under-explored. To address this, we use simulations and analytical calculations to characterise limited-sampling bias of synergy and redundancy in both discrete PID (spiking activity) and Gaussian PID (continuous signals such as MEG or fMRI). We demonstrate that two- and three-sources PID can be strongly biased. Synergy is consistently more affected than redundancy, with the difference increasing with the number of parameters specifying the probability distributions. We introduce effective bias-correction procedures and data-size guidelines, validate them on brain recordings from mice, monkeys and humans across two-photon calcium imaging, electrophysiology, MEG and fMRI, showing that they mitigate synergy overestimation.
Overall, MINT provides a comprehensive set of state-of-the-art information-theoretic methods for neural data spanning discrete (e.g., spike trains) and continuous signals (e.g., LFP, M/EEG, fMRI, calcium imaging), and incorporates validated PID bias-correction procedures and data-size guidelines to reduce synergy overestimation.
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