CLAIDLMar 14, 2025

Annotating Scientific Uncertainty: A comprehensive model using linguistic patterns and comparison with existing approaches

arXiv:2503.11376v13 citationsh-index: 11J. Informetrics
Originality Synthesis-oriented
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This addresses the problem of identifying uncertainty in scientific documents for applications like information retrieval and text mining, but it is incremental as it builds on existing linguistic pattern methods.

The paper tackled detecting scientific uncertainty in scholarly texts, and the UnScientify system achieved an accuracy of 0.808, outperforming large language models in this task.

UnScientify, a system designed to detect scientific uncertainty in scholarly full text. The system utilizes a weakly supervised technique to identify verbally expressed uncertainty in scientific texts and their authorial references. The core methodology of UnScientify is based on a multi-faceted pipeline that integrates span pattern matching, complex sentence analysis and author reference checking. This approach streamlines the labeling and annotation processes essential for identifying scientific uncertainty, covering a variety of uncertainty expression types to support diverse applications including information retrieval, text mining and scientific document processing. The evaluation results highlight the trade-offs between modern large language models (LLMs) and the UnScientify system. UnScientify, which employs more traditional techniques, achieved superior performance in the scientific uncertainty detection task, attaining an accuracy score of 0.808. This finding underscores the continued relevance and efficiency of UnScientify's simple rule-based and pattern matching strategy for this specific application. The results demonstrate that in scenarios where resource efficiency, interpretability, and domain-specific adaptability are critical, traditional methods can still offer significant advantages.

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