2020
DOI: 10.1108/bfj-03-2020-0192
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Using Twitter to explore consumers' sentiments and their social representations towards new food trends

Abstract: PurposeThis paper investigates the use of Twitter for studying the social representations of different regions across the world towards new food trends.Design/methodology/approachA density-based clustering algorithm was applied to 7,014 tweets to identify regions of consumers sharing content about food trends. The attitude of their social representations was addressed with the sentiment analysis, and grid maps were used to explore subregional differences.FindingsTwitter users have a weak, positive attitude tow… Show more

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Cited by 17 publications
(16 citation statements)
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References 79 publications
(126 reference statements)
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“…The subject under study is social media users' active participation during the COVID-19 pandemic. Social media is represented here by Twitter, as this SNS plays a major role in communication during a crisis [93,94]. Twitter is fast becoming established as the prime social reporting site for disseminating information, particularly in times of crises.…”
Section: Sample and Data Collectionmentioning
confidence: 99%
“…The subject under study is social media users' active participation during the COVID-19 pandemic. Social media is represented here by Twitter, as this SNS plays a major role in communication during a crisis [93,94]. Twitter is fast becoming established as the prime social reporting site for disseminating information, particularly in times of crises.…”
Section: Sample and Data Collectionmentioning
confidence: 99%
“…Another important aspect is the possibility to analyse sentiments to gain an understanding of the opinions from which the engagement could be addressed (Caetano et al, 2018;Veltri and Atanasova, 2015). The emotional component of tweets has been used to understand social perception towards a specific phenomenon also in the agri-food sector, such as precision agriculture (Ofori and El-Gayar, 2021), consumer opinions towards food attributes (Borrero and Zabalo, 2021;Samoggia et al, 2020) and new food trends (Pindado and Barrena, 2020). However, these studies do not go in depth in the different technologies or the user profile that are key aspects of the current study.…”
Section: Agri-food Sector and Social Media Datamentioning
confidence: 99%
“…CA allows for mining intelligence from the captured tweets that are in the form of unstructured texts (Krippendorff, 2004). An important step in text analysis and classification, previous to the CA, is data preprocessing (e.g., cleaning, removing noise), which includes the removal of links, non-Latin characters, numbers and users (Pindado and Barrena, 2020). CA can be performed by automatic text processing methods, based on text capturing and machine learning algorithms.…”
Section: Content Analysis (Ca)mentioning
confidence: 99%
See 1 more Smart Citation
“…By mining the Twitter comments, Samoggia et al (2020) explore the views on the health attributes towards coffee with a term frequency analysis, keyword-in-context analysis and sentiment analysis. Pindado and Barrena (2020) use geographic information in social media data to analyze consumer attitudes. Calheiros et al (2017) study consumer-generated online reviews using topic modeling.…”
mentioning
confidence: 99%