Reconstructing noisy intracellular expression dynamics using neural stochastic differential equations, Part I: Mathematical methods
ORAL
Abstract
We provide an analysis of the squared Wasserstein-2 distance between two probability distributions associated with two stochastic differential equations (SDEs). Based on this analysis, we propose the use of a squared distance-based loss function in the reconstruction of SDEs from noisy trajectory data. To demonstrate the practicality of our Wasserstein distance-based loss
functions, we performed numerical experiments that demonstrate the efficiency of our method in reconstructing SDEs that may arise across many problems in cell biology.
functions, we performed numerical experiments that demonstrate the efficiency of our method in reconstructing SDEs that may arise across many problems in cell biology.
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Publication: https://arxiv.org/pdf/2401.11354
Presenters
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Mingtao Xia
NYU
Authors
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Mingtao Xia
NYU
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Xiangting Li
University of California, Los Angeles
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Qijing Shen
University of Oxford
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Tom Chou
University of California, Los Angeles