Research output: Contribution to journal › Article › peer-review
Keyword Generation for Russian-Language Scientific Texts Using the mT5 Model. / Glazkova, A. V.; Morozov, D. A.; Vorobeva, M. S. et al.
In: Automatic Control and Computer Sciences, Vol. 58, No. 7, 12.02.2025, p. 995-1002.Research output: Contribution to journal › Article › peer-review
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TY - JOUR
T1 - Keyword Generation for Russian-Language Scientific Texts Using the mT5 Model
AU - Glazkova, A. V.
AU - Morozov, D. A.
AU - Vorobeva, M. S.
AU - Stupnikov, A. A.
N1 - This study was carried out as part of project no. MK-3118.2022.4, supported by a grant from the President of the Russian Federation for young scientists and candidates of sciences. Keyword Generation for Russian-Language Scientific Texts Using the mT5 Model / A. V. Glazkova, D. A. Morozov, M. S. Vorobeva, A. A. Stupnikov // Automatic Control and Computer Sciences. – 2024. – Vol. 58, No. 7. – P. 995-1002. – DOI 10.3103/S014641162470041X.
PY - 2025/2/12
Y1 - 2025/2/12
N2 - The authors propose an approach to generate keywords for Russian-language scientific texts using the mT5 (multilingual text-to-text transformer) model, fine-tuned on the Keyphrases CS&Math Russian text corpus. Automatic keyword selection is an urgent task in natural language processing, since keywords help readers search for articles and facilitate the systematization of scientific texts. In this paper, the task of selecting keywords is considered as a task of automatic text abstracting. Additional training of mT5 is carried out on the texts of abstracts of Russian-language scientific articles. The input and output data are abstracts and comma-separated lists of keywords, respectively. The results obtained using mT5 are compared with the results of several basic methods: TopicRank, YAKE!, RuTermExtract, and KeyBERT. The following metrics are used to present the results: F‑measure, ROUGE-1, and BERTScore. The best results on the test sample are obtained using mT5 and RuTermExtract. The highest F-measure is demonstrated by the mT5 model (11.24%), surpassing RuTermExtract by 0.22%. RuTermExtract shows the best result according to the ROUGE-1 metric (15.12%). The best results for BERTScore are also achieved by these two methods: mT5, 76.89% (BERTScore using the mBERT model); RuTermExtract, 75.8% (BERTScore based on ruSciBERT). The authors also assess the ability of mT5 to generate keywords that are not in the source text. The limitations of the proposed approach include the need to form a training sample for additional model training and probably the limited applicability of the additional trained model for texts in other subject areas. The advantages of keyword generation using mT5 are the absence of the need to set fixed values for the length and number of keywords, the need for normalization, which is especially important for inflected languages, and the ability to generate keywords that are not explicitly present in the text.
AB - The authors propose an approach to generate keywords for Russian-language scientific texts using the mT5 (multilingual text-to-text transformer) model, fine-tuned on the Keyphrases CS&Math Russian text corpus. Automatic keyword selection is an urgent task in natural language processing, since keywords help readers search for articles and facilitate the systematization of scientific texts. In this paper, the task of selecting keywords is considered as a task of automatic text abstracting. Additional training of mT5 is carried out on the texts of abstracts of Russian-language scientific articles. The input and output data are abstracts and comma-separated lists of keywords, respectively. The results obtained using mT5 are compared with the results of several basic methods: TopicRank, YAKE!, RuTermExtract, and KeyBERT. The following metrics are used to present the results: F‑measure, ROUGE-1, and BERTScore. The best results on the test sample are obtained using mT5 and RuTermExtract. The highest F-measure is demonstrated by the mT5 model (11.24%), surpassing RuTermExtract by 0.22%. RuTermExtract shows the best result according to the ROUGE-1 metric (15.12%). The best results for BERTScore are also achieved by these two methods: mT5, 76.89% (BERTScore using the mBERT model); RuTermExtract, 75.8% (BERTScore based on ruSciBERT). The authors also assess the ability of mT5 to generate keywords that are not in the source text. The limitations of the proposed approach include the need to form a training sample for additional model training and probably the limited applicability of the additional trained model for texts in other subject areas. The advantages of keyword generation using mT5 are the absence of the need to set fixed values for the length and number of keywords, the need for normalization, which is especially important for inflected languages, and the ability to generate keywords that are not explicitly present in the text.
KW - automatic abstracting
KW - keyword selection
KW - mT5
UR - https://www.mendeley.com/catalogue/d1bc8585-39a5-3441-93bb-196bef2468ef/
UR - https://www.scopus.com/record/display.uri?eid=2-s2.0-85218340739&origin=inward&txGid=ec8a95ae4ee36b3c34a583c720e69d17
UR - https://elibrary.ru/item.asp?id=80321024
U2 - 10.3103/S014641162470041X
DO - 10.3103/S014641162470041X
M3 - Article
VL - 58
SP - 995
EP - 1002
JO - Automatic Control and Computer Sciences
JF - Automatic Control and Computer Sciences
SN - 1558-108X
IS - 7
ER -
ID: 64874489