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Main Authors: Wu, Dongxia, Idé, Tsuyoshi, Lozano, Aurélie, Kollias, Georgios, Navrátil, Jiří, Abe, Naoki, Ma, Yi-An, Yu, Rose
Format: Preprint
Published: 2024
Subjects:
Online Access:https://arxiv.org/abs/2402.03726
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author Wu, Dongxia
Idé, Tsuyoshi
Lozano, Aurélie
Kollias, Georgios
Navrátil, Jiří
Abe, Naoki
Ma, Yi-An
Yu, Rose
author_facet Wu, Dongxia
Idé, Tsuyoshi
Lozano, Aurélie
Kollias, Georgios
Navrátil, Jiří
Abe, Naoki
Ma, Yi-An
Yu, Rose
contents We address the problem of learning Granger causality from asynchronous, interdependent, multi-type event sequences. In particular, we are interested in discovering instance-level causal structures in an unsupervised manner. Instance-level causality identifies causal relationships among individual events, providing more fine-grained information for decision-making. Existing work in the literature either requires strong assumptions, such as linearity in the intensity function, or heuristically defined model parameters that do not necessarily meet the requirements of Granger causality. We propose Instance-wise Self-Attentive Hawkes Processes (ISAHP), a novel deep learning framework that can directly infer the Granger causality at the event instance level. ISAHP is the first neural point process model that meets the requirements of Granger causality. It leverages the self-attention mechanism of the transformer to align with the principles of Granger causality. We empirically demonstrate that ISAHP is capable of discovering complex instance-level causal structures that cannot be handled by classical models. We also show that ISAHP achieves state-of-the-art performance in proxy tasks involving type-level causal discovery and instance-level event type prediction.
format Preprint
id arxiv_https___arxiv_org_abs_2402_03726
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle Learning Granger Causality from Instance-wise Self-attentive Hawkes Processes
Wu, Dongxia
Idé, Tsuyoshi
Lozano, Aurélie
Kollias, Georgios
Navrátil, Jiří
Abe, Naoki
Ma, Yi-An
Yu, Rose
Machine Learning
We address the problem of learning Granger causality from asynchronous, interdependent, multi-type event sequences. In particular, we are interested in discovering instance-level causal structures in an unsupervised manner. Instance-level causality identifies causal relationships among individual events, providing more fine-grained information for decision-making. Existing work in the literature either requires strong assumptions, such as linearity in the intensity function, or heuristically defined model parameters that do not necessarily meet the requirements of Granger causality. We propose Instance-wise Self-Attentive Hawkes Processes (ISAHP), a novel deep learning framework that can directly infer the Granger causality at the event instance level. ISAHP is the first neural point process model that meets the requirements of Granger causality. It leverages the self-attention mechanism of the transformer to align with the principles of Granger causality. We empirically demonstrate that ISAHP is capable of discovering complex instance-level causal structures that cannot be handled by classical models. We also show that ISAHP achieves state-of-the-art performance in proxy tasks involving type-level causal discovery and instance-level event type prediction.
title Learning Granger Causality from Instance-wise Self-attentive Hawkes Processes
topic Machine Learning
url https://arxiv.org/abs/2402.03726