Command Palette
Search for a command to run...
Kuicai Dong Yilin Zhao Aixin Sun Jung-Jae Kim Xiaoli Li

Abstract
Open Information Extraction (OpenIE) aims to extract structured relational tuples (subject, relation, object) from sentences and plays critical roles for many downstream NLP applications. Existing solutions perform extraction at sentence level, without referring to any additional contextual information. In reality, however, a sentence typically exists as part of a document rather than standalone; we often need to access relevant contextual information around the sentence before we can accurately interpret it. As there is no document-level context-aware OpenIE dataset available, we manually annotate 800 sentences from 80 documents in two domains (Healthcare and Transportation) to form a DocOIE dataset for evaluation. In addition, we propose DocIE, a novel document-level context-aware OpenIE model. Our experimental results based on DocIE demonstrate that incorporating document-level context is helpful in improving OpenIE performance. Both DocOIE dataset and DocIE model are released for public.
Code Repositories
Benchmarks
| Benchmark | Methodology | Metrics |
|---|---|---|
| open-information-extraction-on-docoie | Reverb | F1: 55.8 |
| open-information-extraction-on-docoie | DocIE w transformer | F1: 60.8 |
| open-information-extraction-on-docoie-1 | DocIE w transformer | F1: 56.9 |
| open-information-extraction-on-docoie-1 | Reverb | F1: 49.7 |
Build AI with AI
From idea to launch — accelerate your AI development with free AI co-coding, out-of-the-box environment and best price of GPUs.