Modeling Document-level Temporal Structures for Building Temporal Dependency Graphs
Choubey, Prafulla Kumar, Huang, Ruihong
–arXiv.org Artificial Intelligence
We propose to leverage news discourse profiling to model document-level temporal structures for building temporal dependency graphs. Our key observation is that the functional roles of sentences used for profiling news discourse signify different time frames relevant to a news story and can, therefore, help to recover the global temporal structure of a document. Our analyses and experiments with the widely used knowledge distillation technique show that discourse profiling effectively identifies distant inter-sentence event and (or) time expression pairs that are temporally related and otherwise difficult to locate.
arXiv.org Artificial Intelligence
Oct-21-2022
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