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WISTERIA: Weak Implicit Signal-based Temporal Relation Extraction with Attention

About

Temporal Relation Extraction (TRE) requires identifying how two events or temporal expressions are related in time. Existing attention-based models often highlight globally salient tokens but overlook the pair-specific cues that actually determine the temporal relation. We propose WISTERIA (Weak Implicit Signal-based Temporal Relation Extraction with Attention), a framework that examines whether the top-K attention components conditioned on each event pair truly encode interpretable evidence for temporal classification. Unlike prior works assuming explicit markers such as before, after, or when, WISTERIA considers signals as any lexical, syntactic, or morphological element implicitly expressing temporal order. By combining multi-head attention with pair-conditioned top-K pooling, the model isolates the most informative contextual tokens for each pair. We conduct extensive experiments on TimeBank-Dense, MATRES, TDDMan, and TDDAuto, including linguistic analyses of top-K tokens. Results show that WISTERIA achieves competitive accuracy and reveals pair-level rationales aligned with temporal linguistic cues, offering a localized and interpretable view of temporal reasoning.

Duy Dao Do, Ana\"is Halftermeyer, Thi-Bich-Hanh Dao• 2026

Related benchmarks

TaskDatasetResultRank
Event TEMPREL extractionMATRES
F1 Score84.3
31
Relation ExtractionTB-DENSE
F1 Score83.1
10
Temporal relation extractionTDDAuto
F1 Score70.9
7
Temporal relation extractionTDDMan
F1 Score49.73
7
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