COTODE: COntinuous Trajectory neural Ordinary Differential Equations for modelling event sequences
Observation of the underlying actors that generate event sequences reveals that they often evolve continuously. Most modern methods, however, tend to model such processes through at most piecewise-continuous trajectories. To address this, we adopt a way of viewing events not as standalone phenomena...
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Zusammenfassung: | Observation of the underlying actors that generate event sequences reveals
that they often evolve continuously. Most modern methods, however, tend to
model such processes through at most piecewise-continuous trajectories. To
address this, we adopt a way of viewing events not as standalone phenomena but
instead as observations of a Gaussian Process, which in turn governs the
actor's dynamics. We propose integrating these obtained dynamics, resulting in
a continuous-trajectory modification of the widely successful Neural ODE model.
Through Gaussian Process theory, we were able to evaluate the uncertainty in an
actor's representation, which arises from not observing them between events.
This estimate led us to develop a novel, theoretically backed negative feedback
mechanism. Empirical studies indicate that our model with Gaussian process
interpolation and negative feedback achieves state-of-the-art performance, with
improvements up to 20% AUROC against similar architectures. |
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DOI: | 10.48550/arxiv.2408.08055 |