YAML Metadata Warning:The pipeline tag "text2text-generation" is not in the official list: text-classification, token-classification, table-question-answering, question-answering, zero-shot-classification, translation, summarization, feature-extraction, text-generation, fill-mask, sentence-similarity, text-to-speech, text-to-audio, automatic-speech-recognition, audio-to-audio, audio-classification, audio-text-to-text, voice-activity-detection, depth-estimation, image-classification, object-detection, image-segmentation, text-to-image, image-to-text, image-to-image, image-to-video, unconditional-image-generation, video-classification, reinforcement-learning, robotics, tabular-classification, tabular-regression, tabular-to-text, table-to-text, multiple-choice, text-ranking, text-retrieval, time-series-forecasting, text-to-video, image-text-to-text, image-text-to-image, image-text-to-video, visual-question-answering, document-question-answering, zero-shot-image-classification, graph-ml, mask-generation, zero-shot-object-detection, text-to-3d, image-to-3d, image-feature-extraction, video-text-to-text, keypoint-detection, visual-document-retrieval, any-to-any, video-to-video, other
Model Card of lmqg/mt5-base-ruquad-qg-ae
This model is fine-tuned version of google/mt5-base for question generation and answer extraction jointly on the lmqg/qg_ruquad (dataset_name: default) via lmqg.
Overview
- Language model: google/mt5-base
- Language: ru
- Training data: lmqg/qg_ruquad (default)
- Online Demo: https://autoqg.net/
- Repository: https://github.com/asahi417/lm-question-generation
- Paper: https://arxiv.org/abs/2210.03992
Usage
- With
lmqg
from lmqg import TransformersQG
# initialize model
model = TransformersQG(language="ru", model="lmqg/mt5-base-ruquad-qg-ae")
# model prediction
question_answer_pairs = model.generate_qa("Нелишним будет отметить, что, развивая это направление, Д. И. Менделеев, поначалу априорно выдвинув идею о температуре, при которой высота мениска будет нулевой, в мае 1860 года провёл серию опытов.")
- With
transformers
from transformers import pipeline
pipe = pipeline("text2text-generation", "lmqg/mt5-base-ruquad-qg-ae")
# answer extraction
answer = pipe("generate question: Нелишним будет отметить, что, развивая это направление, Д. И. Менделеев, поначалу априорно выдвинув идею о температуре, при которой высота мениска будет нулевой, <hl> в мае 1860 года <hl> провёл серию опытов.")
# question generation
question = pipe("extract answers: <hl> в английском языке в нарицательном смысле применяется термин rapid transit (скоростной городской транспорт), однако употребляется он только тогда, когда по смыслу невозможно ограничиться названием одной конкретной системы метрополитена. <hl> в остальных случаях используются индивидуальные названия: в лондоне — london underground, в нью-йорке — new york subway, в ливерпуле — merseyrail, в вашингтоне — washington metrorail, в сан-франциско — bart и т. п. в некоторых городах применяется название метро (англ. metro) для систем, по своему характеру близких к метро, или для всего городского транспорта (собственно метро и наземный пассажирский транспорт (в том числе автобусы и трамваи)) в совокупности.")
Evaluation
- Metric (Question Generation): raw metric file
| Score | Type | Dataset | |
|---|---|---|---|
| BERTScore | 87.9 | default | lmqg/qg_ruquad |
| Bleu_1 | 36.66 | default | lmqg/qg_ruquad |
| Bleu_2 | 29.53 | default | lmqg/qg_ruquad |
| Bleu_3 | 24.23 | default | lmqg/qg_ruquad |
| Bleu_4 | 20.06 | default | lmqg/qg_ruquad |
| METEOR | 30.18 | default | lmqg/qg_ruquad |
| MoverScore | 66.6 | default | lmqg/qg_ruquad |
| ROUGE_L | 35.35 | default | lmqg/qg_ruquad |
- Metric (Question & Answer Generation): raw metric file
| Score | Type | Dataset | |
|---|---|---|---|
| QAAlignedF1Score (BERTScore) | 80.21 | default | lmqg/qg_ruquad |
| QAAlignedF1Score (MoverScore) | 57.17 | default | lmqg/qg_ruquad |
| QAAlignedPrecision (BERTScore) | 76.48 | default | lmqg/qg_ruquad |
| QAAlignedPrecision (MoverScore) | 54.4 | default | lmqg/qg_ruquad |
| QAAlignedRecall (BERTScore) | 84.49 | default | lmqg/qg_ruquad |
| QAAlignedRecall (MoverScore) | 60.55 | default | lmqg/qg_ruquad |
- Metric (Answer Extraction): raw metric file
| Score | Type | Dataset | |
|---|---|---|---|
| AnswerExactMatch | 44.44 | default | lmqg/qg_ruquad |
| AnswerF1Score | 64.31 | default | lmqg/qg_ruquad |
| BERTScore | 86.22 | default | lmqg/qg_ruquad |
| Bleu_1 | 45.61 | default | lmqg/qg_ruquad |
| Bleu_2 | 40.76 | default | lmqg/qg_ruquad |
| Bleu_3 | 36.22 | default | lmqg/qg_ruquad |
| Bleu_4 | 31.64 | default | lmqg/qg_ruquad |
| METEOR | 38.79 | default | lmqg/qg_ruquad |
| MoverScore | 74.64 | default | lmqg/qg_ruquad |
| ROUGE_L | 49.73 | default | lmqg/qg_ruquad |
Training hyperparameters
The following hyperparameters were used during fine-tuning:
- dataset_path: lmqg/qg_ruquad
- dataset_name: default
- input_types: ['paragraph_answer', 'paragraph_sentence']
- output_types: ['question', 'answer']
- prefix_types: ['qg', 'ae']
- model: google/mt5-base
- max_length: 512
- max_length_output: 32
- epoch: 8
- batch: 32
- lr: 0.001
- fp16: False
- random_seed: 1
- gradient_accumulation_steps: 2
- label_smoothing: 0.15
The full configuration can be found at fine-tuning config file.
Citation
@inproceedings{ushio-etal-2022-generative,
title = "{G}enerative {L}anguage {M}odels for {P}aragraph-{L}evel {Q}uestion {G}eneration",
author = "Ushio, Asahi and
Alva-Manchego, Fernando and
Camacho-Collados, Jose",
booktitle = "Proceedings of the 2022 Conference on Empirical Methods in Natural Language Processing",
month = dec,
year = "2022",
address = "Abu Dhabi, U.A.E.",
publisher = "Association for Computational Linguistics",
}
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Dataset used to train lmqg/mt5-base-ruquad-qg-ae
Paper for lmqg/mt5-base-ruquad-qg-ae
Evaluation results
- BLEU4 (Question Generation) on lmqg/qg_ruquadself-reported20.060
- ROUGE-L (Question Generation) on lmqg/qg_ruquadself-reported35.350
- METEOR (Question Generation) on lmqg/qg_ruquadself-reported30.180
- BERTScore (Question Generation) on lmqg/qg_ruquadself-reported87.900
- MoverScore (Question Generation) on lmqg/qg_ruquadself-reported66.600
- QAAlignedF1Score-BERTScore (Question & Answer Generation (with Gold Answer)) on lmqg/qg_ruquadself-reported80.210
- QAAlignedRecall-BERTScore (Question & Answer Generation (with Gold Answer)) on lmqg/qg_ruquadself-reported84.490
- QAAlignedPrecision-BERTScore (Question & Answer Generation (with Gold Answer)) on lmqg/qg_ruquadself-reported76.480
- QAAlignedF1Score-MoverScore (Question & Answer Generation (with Gold Answer)) on lmqg/qg_ruquadself-reported57.170
- QAAlignedRecall-MoverScore (Question & Answer Generation (with Gold Answer)) on lmqg/qg_ruquadself-reported60.550
- QAAlignedPrecision-MoverScore (Question & Answer Generation (with Gold Answer)) on lmqg/qg_ruquadself-reported54.400
- BLEU4 (Answer Extraction) on lmqg/qg_ruquadself-reported31.640
- ROUGE-L (Answer Extraction) on lmqg/qg_ruquadself-reported49.730
- METEOR (Answer Extraction) on lmqg/qg_ruquadself-reported38.790
- BERTScore (Answer Extraction) on lmqg/qg_ruquadself-reported86.220
- MoverScore (Answer Extraction) on lmqg/qg_ruquadself-reported74.640
- AnswerF1Score (Answer Extraction) on lmqg/qg_ruquadself-reported64.310
- AnswerExactMatch (Answer Extraction) on lmqg/qg_ruquadself-reported44.440