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ECKGBench: Benchmarking Large Language Models in E-commerce Leveraging Knowledge Graph

20 March 2025
Langming Liu
Haibin Chen
Yuhao Wang
Yujin Yuan
Shilei Liu
Wenbo Su
Xiangyu Zhao
Bo Zheng
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Abstract

Large language models (LLMs) have demonstrated their capabilities across various NLP tasks. Their potential in e-commerce is also substantial, evidenced by practical implementations such as platform search, personalized recommendations, and customer service. One primary concern associated with LLMs is their factuality (e.g., hallucination), which is urgent in e-commerce due to its significant impact on user experience and revenue. Despite some methods proposed to evaluate LLMs' factuality, issues such as lack of reliability, high consumption, and lack of domain expertise leave a gap between effective assessment in e-commerce. To bridge the evaluation gap, we propose ECKGBench, a dataset specifically designed to evaluate the capacities of LLMs in e-commerce knowledge. Specifically, we adopt a standardized workflow to automatically generate questions based on a large-scale knowledge graph, guaranteeing sufficient reliability. We employ the simple question-answering paradigm, substantially improving the evaluation efficiency by the least input and output tokens. Furthermore, we inject abundant e-commerce expertise in each evaluation stage, including human annotation, prompt design, negative sampling, and verification. Besides, we explore the LLMs' knowledge boundaries in e-commerce from a novel perspective. Through comprehensive evaluations of several advanced LLMs on ECKGBench, we provide meticulous analysis and insights into leveraging LLMs for e-commerce.

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@article{liu2025_2503.15990,
  title={ ECKGBench: Benchmarking Large Language Models in E-commerce Leveraging Knowledge Graph },
  author={ Langming Liu and Haibin Chen and Yuhao Wang and Yujin Yuan and Shilei Liu and Wenbo Su and Xiangyu Zhao and Bo Zheng },
  journal={arXiv preprint arXiv:2503.15990},
  year={ 2025 }
}
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