SOTAVerified

Open Information Extraction

In natural language processing, open information extraction is the task of generating a structured, machine-readable representation of the information in text, usually in the form of triples or n-ary propositions (Source: Wikipedia).

Papers

Showing 110 of 207 papers

TitleStatusHype
ChatPD: An LLM-driven Paper-Dataset Networking SystemCode0
Long-context Non-factoid Question Answering in Indic LanguagesCode0
Few-shot Continual Relation Extraction via Open Information Extraction0
Testing Prompt Engineering Methods for Knowledge Extraction from TextCode0
Challenges in Expanding Portuguese Resources: A View from Open Information Extraction0
Neon: News Entity-Interaction Extraction for Enhanced Question Answering0
BenchIE^FL : A Manually Re-Annotated Fact-Based Open Information Extraction Benchmark0
Statements: Universal Information Extraction from Tables with Large Language Models for ESG KPIsCode1
Large Language Models Perform on Par with Experts Identifying Mental Health Factors in Adolescent Online Forums0
Extract, Define, Canonicalize: An LLM-based Framework for Knowledge Graph ConstructionCode2
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Benchmark Results

#ModelMetricClaimedVerifiedStatus
1ClausIEPrecision0.5Unverified
2MinIEPrecision0.43Unverified
3CompactIEPrecision0.41Unverified
4M2OIE (EN)Precision0.39Unverified
5ROIE-TPrecision0.37Unverified
6OpenIE6Precision0.31Unverified
7M2OIE (ZH)Precision0.26Unverified
8ROIE-NPrecision0.2Unverified
9Stanford OIEPrecision0.11Unverified
10M2OIE (DE)Precision0.09Unverified