| Literature DB >> 33274352 |
Wei Zhang1, Thomas Kobber Panum2, Somesh Jha1,3, Prasad Chalasani3, David Page4.
Abstract
We study the problem of learning Granger causality between event types from asynchronous, interdependent, multi-type event sequences. Existing work suffers from either limited model flexibility or poor model explainability and thus fails to uncover Granger causality across a wide variety of event sequences with diverse event interdependency. To address these weaknesses, we propose CAUSE (Causality from AttribUtions on Sequence of Events), a novel framework for the studied task. The key idea of CAUSE is to first implicitly capture the underlying event interdependency by fitting a neural point process, and then extract from the process a Granger causality statistic using an axiomatic attribution method. Across multiple datasets riddled with diverse event interdependency, we demonstrate that CAUSE achieves superior performance on correctly inferring the inter-type Granger causality over a range of state-of-the-art methods.Entities:
Year: 2020 PMID: 33274352 PMCID: PMC7710164
Source DB: PubMed Journal: Proc Mach Learn Res