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LITE: LLM-Impelled efficient Taxonomy Evaluation

2 April 2025
Lin Zhang
Zhouhong Gu
Suhang Zheng
Tao Wang
Tianyu Li
Hongwei Feng
Yanghua Xiao
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Abstract

This paper presents LITE, an LLM-based evaluation method designed for efficient and flexible assessment of taxonomy quality. To address challenges in large-scale taxonomy evaluation, such as efficiency, fairness, and consistency, LITE adopts a top-down hierarchical evaluation strategy, breaking down the taxonomy into manageable substructures and ensuring result reliability through cross-validation and standardized input formats. LITE also introduces a penalty mechanism to handle extreme cases and provides both quantitative performance analysis and qualitative insights by integrating evaluation metrics closely aligned with task objectives. Experimental results show that LITE demonstrates high reliability in complex evaluation tasks, effectively identifying semantic errors, logical contradictions, and structural flaws in taxonomies, while offering directions for improvement. Code is available atthis https URL.

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@article{zhang2025_2504.01369,
  title={ LITE: LLM-Impelled efficient Taxonomy Evaluation },
  author={ Lin Zhang and Zhouhong Gu and Suhang Zheng and Tao Wang and Tianyu Li and Hongwei Feng and Yanghua Xiao },
  journal={arXiv preprint arXiv:2504.01369},
  year={ 2025 }
}
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