Dynamic Restaurants Quality Mapping Using Online User Reviews
Millions of users post comments to TripAdvisor daily, together with a numeric evaluation of their experience using a rating scale of between 1 and 5 stars. At the same time, inspectors dispatched by national and local authorities visit restaurant premises regularly to audit hygiene standards, safe f...
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doaj-36657392bbe4492cb521c48158185a612021-09-26T01:25:31ZengMDPI AGSmart Cities2624-65112021-08-014581104111210.3390/smartcities4030058Dynamic Restaurants Quality Mapping Using Online User ReviewsDidier Grimaldi0Carly Collins1Sebastian Garcia Acosta2Department of Management, La Salle Faculty, Ramon Llull University, 08022 Barcelona, SpainDepartment of English and Linguistics, Universitat de Lleida, 25003 Lleida, SpainDepartment of Information and Communication Technologies, ICESI University, Cali 760031, ColombiaMillions of users post comments to TripAdvisor daily, together with a numeric evaluation of their experience using a rating scale of between 1 and 5 stars. At the same time, inspectors dispatched by national and local authorities visit restaurant premises regularly to audit hygiene standards, safe food practices, and overall cleanliness. The purpose of our study is to analyze the use of online-generated reviews (OGRs) as a tool to complement official restaurant inspection procedures. Our case study-based approach, with the help of a Python-based scraping library, consists of collecting OGR data from TripAdvisor and comparing them to extant restaurants’ health inspection reports. Our findings reveal that a correlation does exist between OGRs and national health system scorings. In other words, OGRs were found to provide valid indicators of restaurant quality based on inspection ratings and can thus contribute to the prevention of foodborne illness among citizens in real time. The originality of the paper resides in the use of big data and social network data as a an easily accessible, zero-cost, and complementary tool in disease prevention systems. Incorporated in restaurant management dashboards, it will aid in determining what action plans are necessary to improve quality and customer experience on the premises.https://www.mdpi.com/2624-6511/4/3/58OGRshealthsmart cityfood safetybig data |
collection |
DOAJ |
language |
English |
format |
Article |
sources |
DOAJ |
author |
Didier Grimaldi Carly Collins Sebastian Garcia Acosta |
spellingShingle |
Didier Grimaldi Carly Collins Sebastian Garcia Acosta Dynamic Restaurants Quality Mapping Using Online User Reviews Smart Cities OGRs health smart city food safety big data |
author_facet |
Didier Grimaldi Carly Collins Sebastian Garcia Acosta |
author_sort |
Didier Grimaldi |
title |
Dynamic Restaurants Quality Mapping Using Online User Reviews |
title_short |
Dynamic Restaurants Quality Mapping Using Online User Reviews |
title_full |
Dynamic Restaurants Quality Mapping Using Online User Reviews |
title_fullStr |
Dynamic Restaurants Quality Mapping Using Online User Reviews |
title_full_unstemmed |
Dynamic Restaurants Quality Mapping Using Online User Reviews |
title_sort |
dynamic restaurants quality mapping using online user reviews |
publisher |
MDPI AG |
series |
Smart Cities |
issn |
2624-6511 |
publishDate |
2021-08-01 |
description |
Millions of users post comments to TripAdvisor daily, together with a numeric evaluation of their experience using a rating scale of between 1 and 5 stars. At the same time, inspectors dispatched by national and local authorities visit restaurant premises regularly to audit hygiene standards, safe food practices, and overall cleanliness. The purpose of our study is to analyze the use of online-generated reviews (OGRs) as a tool to complement official restaurant inspection procedures. Our case study-based approach, with the help of a Python-based scraping library, consists of collecting OGR data from TripAdvisor and comparing them to extant restaurants’ health inspection reports. Our findings reveal that a correlation does exist between OGRs and national health system scorings. In other words, OGRs were found to provide valid indicators of restaurant quality based on inspection ratings and can thus contribute to the prevention of foodborne illness among citizens in real time. The originality of the paper resides in the use of big data and social network data as a an easily accessible, zero-cost, and complementary tool in disease prevention systems. Incorporated in restaurant management dashboards, it will aid in determining what action plans are necessary to improve quality and customer experience on the premises. |
topic |
OGRs health smart city food safety big data |
url |
https://www.mdpi.com/2624-6511/4/3/58 |
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