Sentiment and emotional analysis of risk perception in the Herculaneum Archaeological Park during Covid-19 pandemic
This paper proposes a methodology for sentiment analysis with emphasis on the emotional aspects of people visiting the Herculaneum Archaeological Park in Italy during the period of the COVID-19 pandemic. The methodology provides a valuable means of continuous feedback on perceived risk of the site. A semantic analysis on Twitter text messages provided input to the risk management team with which they could respond immediately mitigating any apparent risk and reducing the perceived risk. A two-stage approach was adopted to prune a massively large dataset from Twitter. In the first phase, a social network analysis and visualisation tool NodeXL was used to determine the most recurrent words, which was achieved using polarity. This resulted in a suitable subset. In the second phase, the subset was subjected to sentiment and emotion mapping by survey participants. This led to a hybrid approach of using automation for pruning datasets from social media and using a human approach to sentiment and emotion analysis. Whilst suffering from COVID-19, equally, people suffered due to loneliness from isolation dictated by the World Health Organisation. The work revealed that despite such conditions, people’s sentiments demonstrated a positive effect from the online discussions on the Herculaneum site.
Item Type | Article |
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Uncontrolled Keywords | cultural sites; risk sentiment analysis; Twitter; opinion mining; OSINT; Herculaneum Archaeological Park; COVID-19 pandemic; Herculaneum Archaeological Park; Pandemics; Attitude; Social Media; Humans; Emotions; COVID-19; Perception; Article |
Subjects |
Chemistry(all) > Analytical Chemistry Computer Science(all) > Information Systems Physics and Astronomy(all) > Instrumentation Physics and Astronomy(all) > Atomic and Molecular Physics, and Optics Engineering(all) > Electrical and Electronic Engineering Biochemistry, Genetics and Molecular Biology(all) > Biochemistry |
Divisions |
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Date Deposited | 18 Nov 2024 12:34 |
Last Modified | 18 Nov 2024 12:34 |