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Amortized Control of Continuous State Space Feynman-Kac Model for Irregular Time Series

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Many real-world datasets, such as healthcare, climate, and economics, are often collected as irregular time series, which poses challenges for accurate modeling. In this paper, we propose the Amortized Control of continuous State Space Model (ACSSM) for continuous dynamical modeling of time series for irregular and discrete observations. We first present a multi-marginal Doob's $h$-transform to construct a continuous dynamical system conditioned on these irregular observations. Following this, we introduce a variational inference algorithm with a tight evidence lower bound (ELBO), leveraging stochastic optimal control (SOC) theory to approximate the intractable Doob's $h$-transform and simulate the conditioned dynamics. To improve efficiency and scalability during both training and inference, ACSSM leverages auxiliary variable to flexibly parameterize the latent dynamics and amortized control. Additionally, it incorporates a simulation-free latent dynamics framework and a transformer-based data assimilation scheme, facilitating parallel inference of the latent states and ELBO computation. Through empirical evaluations across a variety of real-world datasets, ACSSM demonstrates superior performance in tasks such as classification, regression, interpolation, and extrapolation, while maintaining computational efficiency.

Byoungwoo Park, Hyungi Lee, Juho Lee• 2024

Related benchmarks

TaskDatasetResultRank
RUL predictionN-CMAPSS
RMSE8.38
72
Remaining Useful Life EstimationC-MAPSS FD002 (test)
RMSE19.58
44
Remaining Useful Life predictionC-MAPSS FD001 (test)
RMSE18.08
24
Remaining Useful Life predictionC-MAPSS FD003 (test)
RMSE18.72
24
Remaining Useful Life predictionC-MAPSS FD004 (test)
RMSE20.02
24
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