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Model Card for ADELIE-SFT-1.5B

We introduce ADELIE (Aligning large language moDELs on Information Extraction), an aligned LLM that effectively solves various IE tasks, including closed IE, open IE, and on-demand IE. We first collect and construct a high-quality alignment corpus IEInstruct for IE. Then we train ADELIESFT using instruction tuning on IEInstruct. We further train ADELIESFT with direct preference optimization (DPO) objective, resulting in ADELIEDPO. Extensive experiments on various held-out IE datasets demonstrate that our models (ADELIESFT and ADELIEDPO) achieve state-of-the-art (SoTA) performance among open-source models. We further explore the general capabilities of ADELIE, and experimental results reveal that their general capabilities do not exhibit a noticeable decline.

Model Performance

The table below presents the average F1 scores (%) of the ADELIE model across closed IE, open IE, and on-demand IE tasks, as well as its overall performance (%) on general benchmarks. For dataset details, please refer to the paper.

Model Closed IE Open IE On-demand IE General Average Score
Llama2 7B 5.7 5.6 22.4 52.2
ADELIE-SFT 42.6 46.9 60.4 53.5
ADELIE-DPO 42.7 47.6 60.5 53.8
----------------- ----------- --------- -------------- -----------------------
Llama3.2 3B 19.1 18.5 20.8 55.5
ADELIE-SFT-3B 41.8 47.6 60.8 55.6
ADELIE-DPO-3B 39.2 47.8 60.7 55.6
----------------- ----------- --------- -------------- -----------------------
Qwen2.5 1.5B 16.5 14.2 20.5 54.6
ADELIE-SFT-1.5B 37.7 44.6 58.9 55.0
ADELIE-DPO-1.5B 38.5 45.6 59.2 55.1

Model Description

  • Developed by: Yunjia Qi, Hao Peng, Xiaozhi Wang, Bin Xu, Lei Hou, Juanzi Li
  • Model type: Text Generation
  • Language(s) (NLP): English
  • License: LLaMA2 License for the base model.
  • Finetuned from model [optional]: Qwen2.5-1.5B
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Datasets used to train THU-KEG/ADELIE-SFT-1.5B

Collection including THU-KEG/ADELIE-SFT-1.5B