Exploring Consumer Emotions in Pre-Pandemic and Pandemic Times. A Sentiment Analysis of Perceptions in the Fine-Dining Restaurant Industry in Bucharest, Romania
Abstract
:1. Introduction
2. Theoretical Development
2.1. Impact of the COVID-19 Pandemic on Global Restaurant Dining
2.2. Impact of the COVID-19 Pandemic on Local Restaurant Dining in Romania
2.3. Consumer Perceptions in the Context of the COVID-19 Global Shock
3. Materials and Methods
4. Empirical Results
4.1. Empirical Results of Content Analysis
- the words characterizing the fine-dining restaurants pre-pandemic have been “food”, “service”, “restaurant”, “Bucharest”, “experience”, “menu”, and “wine”;
- during the pandemic, it can be observed that even if the restaurants registered a sharp decline in the total number of reviews because of the restrictions and lockdown, the words characterizing the fine-dining restaurants remain almost the same, namely “food”, “restaurant”, “service”, “menu”, “dishes”, “experience”, “Bucharest”, “tasting”, “staff”, or “chef” Therefore, the fine-dining experience in a pandemic is more likely to be associated with the quality of the dishes and also with the quality of service.
4.2. The Empirical Results of Sentiment Analysis
- if before the pandemic, the most common negative word was “expensive”, followed by “disappointed”, “dessert”, “bad”; during the pandemic these were replaced by “bad”, accompanied by “dessert”, “rude”, and “steep”;
- in terms of the most common positive words, before the pandemic these were “excellent”, “nice”, “amazing”, and they remained the same during the pandemic (“nice”, “amazing”, “wonderful”, “excellent”).
5. Conclusions and Implications
6. Limitations and Future Directions of Research
Author Contributions
Funding
Institutional Review Board Statement
Informed Consent Statement
Data Availability Statement
Conflicts of Interest
Appendix A
Restaurant | First Review | Latest Review |
---|---|---|
Casa di David | 19/05/2010 | 17/01/2021 |
Kaiamo | 14/09/2018 | 29/12/2020 |
L’Atelier | 27/07/2014 | 08/03/2021 |
Relais & Chateaux Le Bistrot Francais | 24/05/2014 | 17/10/2020 |
The Artist | 25/08/2017 | 11/10/2020 |
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t = 2.384. | df = 59.41 | p-value = 0.02 |
alternative hypothesis: true difference in means is not equal to 0 | ||
95 percent confidence interval: 0.08 0.98 | ||
mean of x = 2.03 mean of y = 1.49 |
Positivity | ||
t = 7.78 | df = 1 | p-value = 0.00527 |
alternative hypothesis: true difference in positivity proportions is not equal to 0 | ||
95 percent confidence interval: 0.0229 0.2908 | ||
proportion of positivity in pre-pandemic = 0.823 proportion of positivity in pandemic = 0.666 | ||
Negativity | ||
t = 10.62 | df = 1 | p-value = 0.0011 |
alternative hypothesis: true difference in negativity proportions is not equal to 0 | ||
95 percent confidence interval: 0.0013 0.173 | ||
proportion of negativity in pre-pandemic = 0.964 proportion of negativity in pandemic = 0.877 |
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Harba, J.-N.; Tigu, G.; Davidescu, A.A. Exploring Consumer Emotions in Pre-Pandemic and Pandemic Times. A Sentiment Analysis of Perceptions in the Fine-Dining Restaurant Industry in Bucharest, Romania. Int. J. Environ. Res. Public Health 2021, 18, 13300. https://doi.org/10.3390/ijerph182413300
Harba J-N, Tigu G, Davidescu AA. Exploring Consumer Emotions in Pre-Pandemic and Pandemic Times. A Sentiment Analysis of Perceptions in the Fine-Dining Restaurant Industry in Bucharest, Romania. International Journal of Environmental Research and Public Health. 2021; 18(24):13300. https://doi.org/10.3390/ijerph182413300
Chicago/Turabian StyleHarba, Jacqueline-Nathalie, Gabriela Tigu, and Adriana AnaMaria Davidescu. 2021. "Exploring Consumer Emotions in Pre-Pandemic and Pandemic Times. A Sentiment Analysis of Perceptions in the Fine-Dining Restaurant Industry in Bucharest, Romania" International Journal of Environmental Research and Public Health 18, no. 24: 13300. https://doi.org/10.3390/ijerph182413300
APA StyleHarba, J.-N., Tigu, G., & Davidescu, A. A. (2021). Exploring Consumer Emotions in Pre-Pandemic and Pandemic Times. A Sentiment Analysis of Perceptions in the Fine-Dining Restaurant Industry in Bucharest, Romania. International Journal of Environmental Research and Public Health, 18(24), 13300. https://doi.org/10.3390/ijerph182413300