Fr. 43.90

Making Sense of Large Social Media Corpora - Keywords, Topics, Sentiment, and Hashtags in the Coronavirus Twitter Corpus

Inglese · Copertina rigida

Spedizione di solito entro 6 a 7 settimane

Descrizione

Ulteriori informazioni

This open access book offers a comprehensive overview of available techniques and approaches to explore large social media corpora, using as an illustrative case study the Coronavirus Twitter corpus. First, the author describes in detail a number of methods, strategies, and tools that can be used to access, manage, and explore large Twitter/X corpora, including both user-friendly applications and more advanced methods that involve the use of data management skills and custom programming scripts. He goes on to show how these tools and methods are applied to explore one of the largest Twitter datasets on the COVID-19 pandemic publicly released, covering the two years when the pandemic had the strongest impact on society. Specifically, keyword extraction, topic modelling, sentiment analysis, and hashtag analysis methods are described, contrasted, and applied to extract information from the Coronavirus Twitter Corpus. The book will be of interest to students and researchers in fields that make use of big data to address societal and linguistic concerns, including corpus linguistics, sociology, psychology, and economics.

Sommario

Chapter 1 - Introduction.- Chapter 2 Managing large Twitter datasets.- Chapter 3. Keywords.- Chapter 4. Topics.- Chapter 5. Sentiment.- Chapter 6. Entities.- Chapter 7. Other social media semantic items: hashtags and emojis.- Chapter 8. Lessons learned.

Info autore

Antonio Moreno-Ortiz is a lecturer at the Faculty of Arts of the University of Malaga, Spain.

Riassunto

This open access book offers a comprehensive overview of available techniques and approaches to explore large social media corpora, using as an illustrative case study the Coronavirus Twitter corpus. First, the author describes in detail a number of methods, strategies, and tools that can be used to access, manage, and explore large Twitter/X corpora, including both user-friendly applications and more advanced methods that involve the use of data management skills and custom programming scripts. He goes on to show how these tools and methods are applied to explore one of the largest Twitter datasets on the COVID-19 pandemic publicly released, covering the two years when the pandemic had the strongest impact on society. Specifically, keyword extraction, topic modelling, sentiment analysis, and hashtag analysis methods are described, contrasted, and applied to extract information from the Coronavirus Twitter Corpus. The book will be of interest to students and researchers in fields that make use of big data to address societal and linguistic concerns, including corpus linguistics, sociology, psychology, and economics.

Dettagli sul prodotto

Autori Antonio Moreno-Ortiz
Editore Springer, Berlin
 
Lingue Inglese
Formato Copertina rigida
Pubblicazione 30.04.2024
 
EAN 9783031527180
ISBN 978-3-0-3152718-0
Pagine 192
Dimensioni 148 mm x 14 mm x 210 mm
Peso 360 g
Illustrazioni XII, 192 p. 105 illus., 102 illus. in color.
Categorie Scienze umane, arte, musica > Scienze linguistiche e letterarie > Linguistica generale e comparata

Kommunikationswissenschaft, Social Media, Sentiment Analysis, Medienwissenschaften, Open Access, Applied Linguistics, Natural Language Processing, Research Methods in Language and Linguistics, Corpus Linguistics, Health Communication, keyword extraction

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