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eNauka >  Rezultati >  Advancing computational spectroscopy: machine learning approaches for reconstructing incomplete spectroscopic and collisional datasets
Naziv: Advancing computational spectroscopy: machine learning approaches for reconstructing incomplete spectroscopic and collisional datasets
Autori: Sakan, Nenad  ; Srećković, Vladimir  ; Vujčić, V.  
Godina: 2026
Publikacija: Contributions of the Astronomical Observatory Skalnaté Pleso
ISSN: 1335-1842 Contributions of the Astronomical Observatory Skalnate Pleso Pretraži identifikator
Tip rezultata: Naučni članak
Kolacija: vol. 56 br. 1 str. 123-130
DOI: 10.31577/caosp.2026.56.1.123
WoS-ID: 001690185600010
URI: https://enauka.gov.rs/handle/123456789/1028160
Projekat: Ministry of Science, Technological Development and Innovation of the Republic of Serbia (MSTDIRS) [451-03-66/2024-03/200002, 451-03-47/2023-01/200024]
COST Actions [CA21101]
Izvor metapodataka: (Preuzeto iz CrossRef-a) Srećković, Vladimir
M-kategorija: 
23M23 - Međunarodni časopis kategorije M23

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