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Density-based Neural Temporal Point Processes for Heartbeat Dynamics

Published 27 Nov 2025 in q-bio.TO, eess.SP, and stat.AP | (2511.22096v1)

Abstract: Temporal point processes (TPPs) provide a natural mathematical framework for modeling heartbeats due to capturing underlying physiological inductive biases. In this work, we apply density-based neural TPPs to model heartbeat dynamics from 18 subjects. We adapt a goodness-of-fit framework from classical point process literature to Neural TPPs and use it to optimize hyperparameters, identify appropriate training sequence lengths to capture temporal dependencies, and demonstrate zero-shot predictive capability on heartbeat data.

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