1. Research on the Impact of the Public Safety Emergencies on Women Riders' Preference of Shanghai Real-Time Crowdsourcing Logistics Platform.
- Author
-
Yi Zhang, Dan Li, and Shengren Liu
- Subjects
- *
CROWDSOURCING , *LOGISTICS , *PUBLIC transit ridership , *QUANTITATIVE research , *PUBLIC safety , *EMOTIONAL state - Abstract
This study explores the impact of public safety emergencies on the preferences of women riders within Shanghai's real-time crowdsourcing logistics platform. It employs quantitative research methods, utilizing LDA topic modeling and ERNIE categorization model for data analysis. The research identifies six key topics influencing riders' preferences: Tip Order Information, Sharing and Volunteering, Epidemic Delivery Rules, Quality of Work and Life, Epidemic Control Measures, and Liability Exemption and Reward. The study reveals a cognitive bias among riders towards positive utilities, indicating a generally optimistic emotional state which influences their utility preferences. The findings suggest that the riders prioritize social interests and responsibilities during the pandemic, demonstrating adaptability to new work environments and appreciation for supportive measures by platforms. The study provides insights into the nuances of women riders' preferences, emphasizing the need for targeted strategies by platforms and authorities to enhance job satisfaction and address challenges faced by women riders. [ABSTRACT FROM AUTHOR]
- Published
- 2024
- Full Text
- View/download PDF