Datasets for Verb Alternations across Languages: BLM Templates and Data Augmentation Strategies
arXiv cs.CL / 3/17/2026
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Key Points
- The authors present curated paradigm-based datasets for verb alternations across four languages (English, German, Italian, and Hebrew) to probe cross-sentence knowledge of change-of-state and object-drop constructions.
- The datasets comprise thousands of Blackbird Language Matrices (BLMs) problems, a language-specific RPM/ARC-like task where models must select the sentence that completes a pattern according to syntactic and semantic rules.
- They introduce three types of templates with varying complexity and apply linguistically-informed data augmentation across synthetic and natural data.
- Baseline results across English, Italian, German, and Hebrew demonstrate the diagnostic usefulness of the datasets for evaluating LLMs’ grasp of verb alternations.
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