ФАО АГРИС — международная информационная система по сельскохозяйственным наукам и технологиям

Connecting firm's web scraped textual content to body of science: Utilizing microsoft academic graph hierarchical topic modeling

2022

Hajikhani, Arash | Pukelis, Lukas | Suominen, Arho | Ashouri, Sajad | Schubert, Torben | Notten, Ad | Cunningham, Scott W.


Библиографическая информация
Том 9 Нумерация страниц 101650 ISSN 2215-0161
Издатель
Springer US
Другие темы
Web scraping; Webs; A method for creating a linkage between web scraped company’s websitecontent to scientific literature topical structure; Europeans; Economic classification scheme; Graphs; Knowledge transformation; Natural language processing
Язык
Английский
Лицензия
//data.crossref.org/schemas/AccessIndicators.xsd:license_ref>http://purl.org/eprint/accessRights/OpenAccess | //data.crossref.org/schemas/AccessIndicators.xsd:program>//data.crossref.org/schemas/AccessIndicators.xsd:license_ref> | //data.crossref.org/schemas/AccessIndicators.xsd:program>
Тип
Journal Article; Text

2024-02-28
MODS
Посмотрите в Google Scholar
If you notice any incorrect information relating to this record, please contact us at [email protected] [email protected]