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--- |
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datasets: |
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- squad |
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tags: |
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- question-generation |
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widget: |
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- text: "Harry Potter is a series of seven fantasy novels written by British author, [HL]J. K. Rowling[HL]." |
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--- |
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# Transformer QG on SQuAD |
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HLQG is Proposed by [Ying-Hong Chan & Yao-Chung Fan. (2019). A Re-current BERT-based Model for Question Generation.](https://www.aclweb.org/anthology/D19-5821/) |
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**This is a Reproduce Version** |
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More detail: [p208p2002/Transformer-QG-on-SQuAD](https://github.com/p208p2002/Transformer-QG-on-SQuAD) |
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## Usage |
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### Input Format |
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``` |
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C' = [c1, c2, ..., [HL], a1, ..., a|A|, [HL], ..., c|C|] |
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``` |
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### Input Example |
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``` |
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Harry Potter is a series of seven fantasy novels written by British author, [HL]J. K. Rowling[HL]. |
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``` |
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> # Who wrote Harry Potter? |
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## Data setting |
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We report two dataset setting as Follow |
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### SQuAD |
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- train: 87599\\\\t |
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- validation: 10570 |
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> [SQuAD: 100,000+ Questions for Machine Comprehension of Text](https://arxiv.org/abs/1606.05250) |
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### SQuAD NQG |
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- train: 75722 |
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- dev: 10570 |
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- test: 11877 |
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> [Learning to Ask: Neural Question Generation for Reading Comprehension](https://arxiv.org/abs/1705.00106) |
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## Available models |
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- BART |
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- GPT2 |
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- T5 |
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## Expriments |
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We report score with `NQG Scorer` which is using in SQuAD NQG. |
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If not special explanation, the size of the model defaults to "base". |
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### SQuAD |
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Model |Bleu 1|Bleu 2|Bleu 3|Bleu 4|METEOR|ROUGE-L| |
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---------------------------------|------|------|------|------|------|-------| |
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BART-HLSQG |54.67 |39.26 |30.34 |24.15 |25.43 |52.64 | |
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GPT2-HLSQG |49.31 |33.95 |25.41| 19.69 |22.29 |48.82 | |
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T5-HLSQG |54.29 |39.22 |30.43 |24.26 |25.56 |53.11 | |
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### SQuAD NQG |
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Model |Bleu 1|Bleu 2|Bleu 3|Bleu 4|METEOR|ROUGE-L| |
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---------------------------------|------|------|------|------|------|-------| |
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BERT-HLSQG (Chan et al.) |49.73 |34.60 |26.13 |20.33 |23.88 |48.23 | |
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BART-HLSQG |54.12 |38.19 |28.84 |22.35 |24.55 |51.03 | |
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GPT2-HLSQG |49.82 |33.69 |24.71 |18.63 |21.90 |47.60 | |
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T5-HLSQG |53.13 |37.60 |28.62 |22.38 |24.48 |51.20 | |