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Main Authors: Bai, Jiaxin, Fan, Wei, Hu, Qi, Zong, Qing, Li, Chunyang, Tsang, Hong Ting, Luo, Hongyu, Yim, Yauwai, Huang, Haoyu, Zhou, Xiao, Qin, Feng, Zheng, Tianshi, Peng, Xi, Yao, Xin, Yang, Huiwen, Wu, Leijie, Ji, Yi, Zhang, Gong, Chen, Renhai, Song, Yangqiu
Format: Preprint
Published: 2025
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Online Access:https://arxiv.org/abs/2505.23628
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author Bai, Jiaxin
Fan, Wei
Hu, Qi
Zong, Qing
Li, Chunyang
Tsang, Hong Ting
Luo, Hongyu
Yim, Yauwai
Huang, Haoyu
Zhou, Xiao
Qin, Feng
Zheng, Tianshi
Peng, Xi
Yao, Xin
Yang, Huiwen
Wu, Leijie
Ji, Yi
Zhang, Gong
Chen, Renhai
Song, Yangqiu
author_facet Bai, Jiaxin
Fan, Wei
Hu, Qi
Zong, Qing
Li, Chunyang
Tsang, Hong Ting
Luo, Hongyu
Yim, Yauwai
Huang, Haoyu
Zhou, Xiao
Qin, Feng
Zheng, Tianshi
Peng, Xi
Yao, Xin
Yang, Huiwen
Wu, Leijie
Ji, Yi
Zhang, Gong
Chen, Renhai
Song, Yangqiu
contents We present AutoSchemaKG, a framework for fully autonomous knowledge graph construction that eliminates the need for predefined schemas. Our system leverages large language models to simultaneously extract knowledge triples and induce comprehensive schemas directly from text, modeling both entities and events while employing conceptualization to organize instances into semantic categories. Processing over 50 million documents, we construct ATLAS (Automated Triple Linking And Schema induction), a family of knowledge graphs with 900+ million nodes and 5.9 billion edges. This approach outperforms state-of-the-art baselines on multi-hop QA tasks and enhances LLM factuality. Notably, our schema induction achieves 92\% semantic alignment with human-crafted schemas with zero manual intervention, demonstrating that billion-scale knowledge graphs with dynamically induced schemas can effectively complement parametric knowledge in large language models.
format Preprint
id arxiv_https___arxiv_org_abs_2505_23628
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle AutoSchemaKG: Autonomous Knowledge Graph Construction through Dynamic Schema Induction from Web-Scale Corpora
Bai, Jiaxin
Fan, Wei
Hu, Qi
Zong, Qing
Li, Chunyang
Tsang, Hong Ting
Luo, Hongyu
Yim, Yauwai
Huang, Haoyu
Zhou, Xiao
Qin, Feng
Zheng, Tianshi
Peng, Xi
Yao, Xin
Yang, Huiwen
Wu, Leijie
Ji, Yi
Zhang, Gong
Chen, Renhai
Song, Yangqiu
Computation and Language
Artificial Intelligence
We present AutoSchemaKG, a framework for fully autonomous knowledge graph construction that eliminates the need for predefined schemas. Our system leverages large language models to simultaneously extract knowledge triples and induce comprehensive schemas directly from text, modeling both entities and events while employing conceptualization to organize instances into semantic categories. Processing over 50 million documents, we construct ATLAS (Automated Triple Linking And Schema induction), a family of knowledge graphs with 900+ million nodes and 5.9 billion edges. This approach outperforms state-of-the-art baselines on multi-hop QA tasks and enhances LLM factuality. Notably, our schema induction achieves 92\% semantic alignment with human-crafted schemas with zero manual intervention, demonstrating that billion-scale knowledge graphs with dynamically induced schemas can effectively complement parametric knowledge in large language models.
title AutoSchemaKG: Autonomous Knowledge Graph Construction through Dynamic Schema Induction from Web-Scale Corpora
topic Computation and Language
Artificial Intelligence
url https://arxiv.org/abs/2505.23628