English

The Future is not One-dimensional: Complex Event Schema Induction by Graph Modeling for Event Prediction

Artificial Intelligence 2022-05-02 v3

Abstract

Event schemas encode knowledge of stereotypical structures of events and their connections. As events unfold, schemas are crucial to act as a scaffolding. Previous work on event schema induction focuses either on atomic events or linear temporal event sequences, ignoring the interplay between events via arguments and argument relations. We introduce a new concept of Temporal Complex Event Schema: a graph-based schema representation that encompasses events, arguments, temporal connections and argument relations. In addition, we propose a Temporal Event Graph Model that predicts event instances following the temporal complex event schema. To build and evaluate such schemas, we release a new schema learning corpus containing 6,399 documents accompanied with event graphs, and we have manually constructed gold-standard schemas. Intrinsic evaluations based on schema matching and instance graph perplexity, prove the superior quality of our probabilistic graph schema library compared to linear representations. Extrinsic evaluation on schema-guided future event prediction further demonstrates the predictive power of our event graph model, significantly outperforming human schemas and baselines by more than 23.8% on HITS@1.

Keywords

Cite

@article{arxiv.2104.06344,
  title  = {The Future is not One-dimensional: Complex Event Schema Induction by Graph Modeling for Event Prediction},
  author = {Manling Li and Sha Li and Zhenhailong Wang and Lifu Huang and Kyunghyun Cho and Heng Ji and Jiawei Han and Clare Voss},
  journal= {arXiv preprint arXiv:2104.06344},
  year   = {2022}
}
R2 v1 2026-06-24T01:07:54.170Z