Graph explorer

Transformer Hawkes Process

Modern data acquisition routinely produce massive amounts of event sequence data in various domains, such as social media, healthcare, and financial markets. These data often exhibit complicated short-term and long-term temporal dependencies. However, most of the existing recurrent neural network based point process models fail to capture such dependencies, and yield unreliable prediction performance. To address this issue, we propose a Transformer Hawkes Process (THP) model, which leverages the self-attention mechanism to capture long-term dependencies and meanwhile enjoys computational efficiency. Numerical experiments on various datasets show that THP outperforms existing models in terms of both likelihood and event prediction accuracy by a notable margin. Moreover, THP is quite general and can incorporate additional structural knowledge. We provide a concrete example, where THP achieves improved prediction performance for learning multiple point processes when incorporating their relational information.

7 nodes7 linksoverview previewTransformer Hawkes Process
7 nodes7 links
Transformer Hawkes Process7 visible / 7 total nodes / 17 links
Works onCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipCo-authorshipAuthorshipAuthorshipAuthorshipAuthorshipTopic signalAuthorshipWTransformer Hawkes Processpreprint / 2021ASimiao ZuoResearcherAHaoming JiangResearcherAZichong LiResearcherATuo ZhaoResearcherTMachine Learning49008 worksAHongyuan ZhaResearcher
PaperSignal 106 links

Transformer Hawkes Process

preprint / 2021

Open