Public Opinion Mining on Construction Health and Safety: Latent Dirichlet Allocation Approach

Author:

Zeng Liyun1ORCID,Li Rita Yi Man2ORCID,Yigitcanlar Tan3ORCID,Zeng Huiling4

Affiliation:

1. Civil and Architectural Engineering Institute, Panzhihua University, Panzhihua 617000, China

2. Sustainable Real Estate Research Center, Hong Kong Shue Yan University, Hong Kong, China

3. City 4.0 Lab, Queensland University of Technology, Brisbane, QLD 4000, Australia

4. Rajamangala University of Technology Tawan-Ok, Bangkok 10400, Thailand

Abstract

The construction industry has been experiencing many occupational accidents as working on construction sites is dangerous. To reduce the likelihood of accidents, construction companies share the latest construction health and safety news and information on social media. While research studies in recent years have explored the perceptions towards these companies’ social media pages, there are no big data analytic studies conducted on Instagram about construction health and safety. This study aims to consolidate public perceptions of construction health and safety by analyzing Instagram posts. The study adopted a big data analytics approach involving visual, content, user, and sentiment analyses of Instagram posts (n = 17,835). The study adopted the Latent Dirichlet Allocation, a kind of machine learning approach for generative probabilistic topic extraction, and the five most mentioned topics were: (a) training service, (b) team management, (c) training organization, (d) workers’ work and family, and (e) users’ action. Besides, the Jaccard coefficient co-occurrence cluster analysis revealed: (a) the most mentioned collocations were ‘construction safety week’, ‘safety first’, and ‘construction team’, (b) the largest clusters were ‘safety training’, ‘occupational health and safety administration’, and ‘health and safety environment’, (c) the most active users were ‘Parallel Consultancy Ltd.’, ‘Pike Consulting Group’, and ‘Global Training Canada’, and (d) positive sentiment accounted for an overwhelming figure of 85%. The findings inform the industry on public perceptions that help create awareness and develop preventative measures for increased health and safety and decreased incidents.

Funder

Panzhihua University

Publisher

MDPI AG

Subject

Building and Construction,Civil and Structural Engineering,Architecture

Reference44 articles.

1. OSHA (2022, August 26). Construction Industry. Occupational Safety and Health Administration, Available online: https://www.osha.gov/.

2. Health and Safety Executive (HSE) (2023, March 26). Construction Statistics in Great Britain, Available online: https://www.hse.gov.uk/statistics/industry/construction.pdf.

3. BigRentz (2022, August 08). 25 Construction Safety Statistics for 2022. Available online: https://www.bigrentz.com/blog/construction-safety-statistics.

4. BLS (2023, March 26). Employer-Reported Workplace Injuries and Illnesses–2021, Available online: https://www.bls.gov/news.release/pdf/osh.pdf.

5. Construction Industry Focus (2022, August 26). Exposure|More than 30 Casualties in the Construction Field in 2022! Summary of Recent Typical Security Incidents. Available online: https://mp.weixin.qq.com/s/upl6ZEXIPW2zFzqu0Kl_7Q.

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