BoschAI @ Causal News Corpus 2023: Robust Cause-Effect Span Extraction using Multi-Layer Sequence Tagging and Data Augmentation
Schrader, Timo Pierre, Razniewski, Simon, Lange, Lukas, Friedrich, Annemarie
–arXiv.org Artificial Intelligence
Understanding causality is a core aspect of intelligence. The Event Causality Identification with Causal News Corpus Shared Task addresses two aspects of this challenge: Subtask 1 aims at detecting causal relationships in texts, and Subtask 2 requires identifying signal words and the spans that refer to the cause or effect, respectively. Our system, which is based on pre-trained transformers, stacked sequence tagging, and synthetic data augmentation, ranks third in Subtask 1 and wins Subtask 2 with an F1 score of 72.8, corresponding to a margin of Figure 1: Our proposed modeling technique for extracting 13 pp.
arXiv.org Artificial Intelligence
Dec-11-2023
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