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Li, Guangping; Wang, Junzhi; Wang, Zhao (2025) Applications of machine learning in astrochemistry. Chinese Science Bulletin, 70 (30). doi:10.1360/tb-2024-1139

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Reference TypeJournal (article/letter/editorial)
TitleApplications of machine learning in astrochemistry
JournalChinese Science Bulletin
AuthorsLi, GuangpingAuthor
Wang, JunzhiAuthor
Wang, ZhaoAuthor
Year2025 (October 1)Volume70
Issue30
PublisherScience China Press., Co. Ltd.
DOIdoi:10.1360/tb-2024-1139Search in ResearchGate
Generate Citation Formats
Mindat Ref. ID19086458Long-form Identifiermindat:1:5:19086458:5
GUID0
Full ReferenceLi, Guangping; Wang, Junzhi; Wang, Zhao (2025) Applications of machine learning in astrochemistry. Chinese Science Bulletin, 70 (30). doi:10.1360/tb-2024-1139
Plain TextLi, Guangping; Wang, Junzhi; Wang, Zhao (2025) Applications of machine learning in astrochemistry. Chinese Science Bulletin, 70 (30). doi:10.1360/tb-2024-1139
In(2025, October) Chinese Science Bulletin Vol. 70 (30). Science China Press., Co. Ltd.

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Stienstra C M, van Wieringen T, Hebert L, et al. A machine-learned “chemical intuition” to overcome spectroscopic data scarcity. Front Astron Space Sci, 2024, 21: 256–266.


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