Click on the titles below to expand the information about each abstract.
Viewing 1 results ...
Chinazzo, G (2021) Investigating the indoor environmental quality of different workplaces through web-scraping and text-mining of Glassdoor reviews. Building Research & Information, 49(06), 695–713.
- Type: Journal Article
- Keywords: Built environment; data mining; indoor environmental quality; occupant perceptions;
- ISBN/ISSN: 0961-3218
- URL: https://doi.org/10.1080/09613218.2021.1908879
The analysis of occupants’ perception can improve building indoor environmental quality (IEQ). Going beyond conventional surveys, this study presents an innovative analysis of occupants’ feedback about the IEQ of different workplaces based on web-scraping and text-mining of online job reviews. A total of 1,158,706 job reviews posted on Glassdoor about 257 large organizations (with more than 10,000 employees) are scraped and analyzed. Within these reviews, 10,593 include complaints about at least one IEQ aspect. The analysis of this large number of feedbacks referring to several workplaces is the first of its kind and leads to two main results: (1) IEQ complaints mostly arise in workplaces that are not office buildings, especially regarding poor thermal and indoor air quality conditions in warehouses, stores, kitchens, and trucks; (2) reviews containing IEQ complaints are more negative than reviews without IEQ complaints. The first result highlights the need for IEQ investigations beyond office buildings. The second result strengthens the potential detrimental effect that uncomfortable IEQ conditions can have on job satisfaction. This study demonstrates the potential of User-Generated Content and text-mining techniques to analyze the IEQ of workplaces as an alternative to conventional surveys, for scientific and practical purposes.