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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.

Abstract

Large language models (LLMs) have shown remarkable performance across various sentence-based linguistic phenomena, yet their ability to capture cross-sentence paradigmatic patterns, such as verb alternations, remains underexplored. In this work, we present curated paradigm-based datasets for four languages, designed to probe systematic cross-sentence knowledge of verb alternations (change-of-state and object-drop constructions in English, German and Italian, and Hebrew binyanim). The datasets comprise thousands of the Blackbird Language Matrices (BLMs) problems. The BLM task -- an RPM/ARC-like task devised specifically for language -- is a controlled linguistic puzzle where models must select the sentence that completes a pattern according to syntactic and semantic rules. We introduce three types of templates varying in complexity and apply linguistically-informed data augmentation strategies across synthetic and natural data. We provide simple baseline performance results across English, Italian, German, and Hebrew, that demonstrate the diagnostic usefulness of the datasets.