LGOct 1, 2022

HyperHawkes: Hypernetwork based Neural Temporal Point Process

arXiv:2210.00213v12 citationsh-index: 16
Originality Incremental advance
AI Analysis

This work addresses the problem of adapting temporal point processes to dynamic environments for applications like social media and healthcare, though it appears incremental in combining hypernetworks with existing methods.

The paper tackles the challenges of generalizing temporal point processes to unseen event sequences and enabling continual learning with minimal forgetting, proposing HyperHawkes, which achieves zero-shot prediction and mitigates catastrophic forgetting in experiments on two real-world datasets.

Temporal point process serves as an essential tool for modeling time-to-event data in continuous time space. Despite having massive amounts of event sequence data from various domains like social media, healthcare etc., real world application of temporal point process faces two major challenges: 1) it is not generalizable to predict events from unseen sequences in dynamic environment 2) they are not capable of thriving in continually evolving environment with minimal supervision while retaining previously learnt knowledge. To tackle these issues, we propose \textit{HyperHawkes}, a hypernetwork based temporal point process framework which is capable of modeling time of occurrence of events for unseen sequences. Thereby, we solve the problem of zero-shot learning for time-to-event modeling. We also develop a hypernetwork based continually learning temporal point process for continuous modeling of time-to-event sequences with minimal forgetting. In this way, \textit{HyperHawkes} augments the temporal point process with zero-shot modeling and continual learning capabilities. We demonstrate the application of the proposed framework through our experiments on two real-world datasets. Our results show the efficacy of the proposed approach in terms of predicting future events under zero-shot regime for unseen event sequences. We also show that the proposed model is able to predict sequences continually while retaining information from previous event sequences, hence mitigating catastrophic forgetting for time-to-event data.

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