Analysis of selected Twitter headers during the pandemic using big data method
Year of publication: |
2022
|
---|---|
Authors: | Acar, Ibrahim Attila ; Altıntaş, Volkan |
Published in: |
Pandemnomics: The Pandemic's Lasting Economic Effects. - Singapore : Springer Singapore, ISBN 978-981-16-8024-3. - 2022, p. 257-273
|
Subject: | Natural language processing | Data analysis | Text mining | Data visualization | Social networks | Twitter | Survey | Social graph | Sentiment analysis | Pandemic | Economics of COVID-19 pandemic | Social Web | Social web | Coronavirus | Data Mining | Data mining | Epidemie | Epidemic | Big Data | Big data | Soziales Netzwerk | Social network | Text |
-
Textual analysis of a Twitter corpus during the Covid-19 pandemics
Astuti, Valerio, (2022)
-
Extracting feelings of people regarding COVID-19 by social network mining
Vahdat-Nejad, Hamed, (2022)
-
Reading customers' minds through textual big data : challenges, practical guidelines, and proposals
Kwon, Wooseok, (2023)
- More ...
-
Pandemnomics: The Pandemic's Lasting Economic Effects
Açıkgöz, Bernur, (2022)
-
İpek, Elif Aysȩ Sahin, (2022)
-
Intercompany mobbing: the effects of company growth
Göçen, Sedat, (2013)
- More ...