Continuous modeling of sporadically-observed time series

Modeling real-world multidimensional time series can be particularly challenging when these are sporadically observed (ie, sampling is irregular both in time and across dimensions)—such as in the case of clinical patient data. To address these challenges, we propose (1) a continuous-time version of the Gated Recurrent Unit, building upon the recent Neural Ordinary Differential Equations (Chen et al., 2018), and (2) a Bayesian update network that processes the sporadic observations. We bring these two ideas together in our GRU-ODE-Bayes method....

January 25, 2022 · 1 min · Edward De Brouwer