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A Temporal Knowledge Graph Generation Dataset Supervised Distantly by Large Language Models.

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  • 1Big Data Research Center, University of Electronic Science and Technology of China, Chengdu, 611731, Sichuan, China.

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Summary
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This study introduces a new method for building temporal knowledge graphs (TKGs) by extracting facts and their timestamps from documents. The research presents a novel dataset and an LLM-based framework to capture temporal relations, enhancing information retrieval.

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Area of Science:

  • Natural Language Processing
  • Information Extraction
  • Knowledge Representation

Background:

  • Knowledge graphs represent facts as triples (entity, relation, entity).
  • Existing methods often overlook temporal information, limiting the understanding of dynamic relationships.
  • Document-level relation extraction is crucial for building comprehensive knowledge graphs.

Purpose of the Study:

  • To address the gap in temporal knowledge graph (TKG) construction from unstructured text.
  • To develop a novel dataset and methodology for extracting temporal information from documents.
  • To evaluate the effectiveness of large language models (LLMs) in temporal relation extraction.

Main Methods:

  • Constructed a new dataset by mining relation patterns and combining facts with timestamps to form temporal quadruples.
  • Utilized LLMs to generate temporal quadruples for triples lacking explicit timestamps.
  • Implemented multiple filters and manual annotation for data quality assurance.
  • Proposed an LLM-based framework transforming relation extraction into a sequence-to-sequence task for predicting relations with timestamps.

Main Results:

  • Demonstrated the feasibility of constructing temporal knowledge graphs from documents.
  • Showcased the performance of LLMs in extracting relations with temporal information using the proposed dataset and framework.
  • Validated the quality and utility of the newly created temporal dataset.

Conclusions:

  • The developed dataset and LLM-based framework significantly advance the field of temporal knowledge graph construction.
  • Incorporating temporal information provides a more comprehensive understanding of factual connections within documents.
  • LLMs show strong potential for extracting complex temporal relationships from text.