Trajectory Flow Matching with Applications to Clinical Time Series Modelling
–Neural Information Processing Systems
Modeling stochastic and irregularly sampled time series is a challenging problem found in a wide range of applications, especially in medicine. Neural stochastic differential equations (Neural SDEs) are an attractive modeling technique for this problem, which parameterize the drift and diffusion terms of an SDE with neural networks. However, current algorithms for training Neural SDEs require backpropagation through the SDE dynamics, greatly limiting their scalability and stability.
Neural Information Processing Systems
Dec-27-2025, 05:29:10 GMT
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