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SMURF-THP: Score Matching-based UnceRtainty quantiFication for Transformer Hawkes Process

Authors :
Li, Zichong
Xu, Yanbo
Zuo, Simiao
Jiang, Haoming
Zhang, Chao
Zhao, Tuo
Zha, Hongyuan
Publication Year :
2023

Abstract

Transformer Hawkes process models have shown to be successful in modeling event sequence data. However, most of the existing training methods rely on maximizing the likelihood of event sequences, which involves calculating some intractable integral. Moreover, the existing methods fail to provide uncertainty quantification for model predictions, e.g., confidence intervals for the predicted event's arrival time. To address these issues, we propose SMURF-THP, a score-based method for learning Transformer Hawkes process and quantifying prediction uncertainty. Specifically, SMURF-THP learns the score function of events' arrival time based on a score-matching objective that avoids the intractable computation. With such a learned score function, we can sample arrival time of events from the predictive distribution. This naturally allows for the quantification of uncertainty by computing confidence intervals over the generated samples. We conduct extensive experiments in both event type prediction and uncertainty quantification of arrival time. In all the experiments, SMURF-THP outperforms existing likelihood-based methods in confidence calibration while exhibiting comparable prediction accuracy.

Details

Database :
arXiv
Publication Type :
Report
Accession number :
edsarx.2310.16336
Document Type :
Working Paper