TL;DR
This paper introduces an unsupervised deep learning framework using marked temporal point processes to model and infer missing events in continuous-time sequences, applicable to real-world data with incomplete observations.
Contribution
It proposes a novel unsupervised variational inference method for MTPP that handles missing events without requiring prior labels, improving modeling in practical scenarios.
Findings
Effective imputation of missing events in sequences.
Joint learning of observed and missing event processes.
Improved modeling of real-world continuous-time data.
Abstract
A large fraction of data generated via human activities such as online purchases, health records, spatial mobility etc. can be represented as a sequence of events over a continuous-time. Learning deep learning models over these continuous-time event sequences is a non-trivial task as it involves modeling the ever-increasing event timestamps, inter-event time gaps, event types, and the influences between different events within and across different sequences. In recent years neural enhancements to marked temporal point processes (MTPP) have emerged as a powerful framework to model the underlying generative mechanism of asynchronous events localized in continuous time. However, most existing models and inference methods in the MTPP framework consider only the complete observation scenario i.e. the event sequence being modeled is completely observed with no missing events -- an ideal…
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