--- language: - en tags: - fast - coreference-resolution license: mit datasets: - multi_news - ontonotes metrics: - CoNLL task_categories: - coreference-resolution model-index: - name: biu-nlp/f-coref results: - task: type: coreference-resolution name: coreference-resolution dataset: name: ontonotes type: coreference metrics: - name: Avg. F1 type: CoNLL value: 78.5 --- ## F-Coref: Fast, Accurate and Easy to Use Coreference Resolution [F-Coref](https://arxiv.org/abs/2209.04280) allows to process 2.8K OntoNotes documents in 25 seconds on a V100 GPU (compared to 6 minutes for the [LingMess](https://arxiv.org/abs/2205.12644) model, and to 12 minutes of the popular AllenNLP coreference model) with only a modest drop in accuracy. The fast speed is achieved through a combination of distillation of a compact model from the LingMess model, and an efficient batching implementation using a technique we call leftover Please check the [official repository](https://github.com/shon-otmazgin/fastcoref) for more details and updates. #### Experiments | Model | Runtime | Memory | |-----------------------|---------|---------| | [Joshi et al. (2020)](https://arxiv.org/abs/1907.10529) | 12:06 | 27.4 | | [Otmazgin et al. (2022)](https://arxiv.org/abs/2205.12644) | 06:43 | 4.6 | | + Batching | 06:00 | 6.6 | | [Kirstain et al. (2021)](https://arxiv.org/abs/2101.00434) | 04:37 | 4.4 | | [Dobrovolskii (2021)](https://arxiv.org/abs/2109.04127) | 03:49 | 3.5 | | [F-Coref](https://arxiv.org/abs/2209.04280) | 00:45 | 3.3 | | + Batching | 00:35 | 4.5 | | + Leftovers batching | 00:25 | 4.0 | The inference time(Min:Sec) and memory(GiB) for each model on 2.8K documents. Average of 3 runs. Hardware, NVIDIA Tesla V100 SXM2. ### Citation ``` @inproceedings{Otmazgin2022FcorefFA, title={F-coref: Fast, Accurate and Easy to Use Coreference Resolution}, author={Shon Otmazgin and Arie Cattan and Yoav Goldberg}, booktitle={AACL}, year={2022} } ``` [F-coref: Fast, Accurate and Easy to Use Coreference Resolution](https://aclanthology.org/2022.aacl-demo.6) (Otmazgin et al., AACL-IJCNLP 2022)