2022
DOI: 10.21203/rs.3.rs-1902000/v1
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Bayesian deep learning for error estimation in the analysis of anomalous diffusion

Abstract: Modern single-particle-tracking techniques produce extensive time-series of diffusive motion in a wide variety of systems, from single-molecule motion in living-cells to movement ecology. The quest is to decipher the physical mechanisms encoded in the data and thus to better understand the probed systems. We here augment recently proposed machine-learning techniques for decoding anomalous-diffusion data to include an uncertainty estimate in addition to the predicted output. To avoid the Black-Box-Problem a Bay… Show more

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