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📄 Abstract
Abstract: Bike-sharing is an environmentally friendly shared mobility mode, but its
self-loop phenomenon, where bikes are returned to the same station after
several time usage, significantly impacts equity in accessing its services.
Therefore, this study conducts a multiscale analysis with a spatial
autoregressive model and double machine learning framework to assess
socioeconomic features and geospatial location's impact on the self-loop
phenomenon at metro stations and street scales. The results reveal that
bike-sharing self-loop intensity exhibits significant spatial lag effect at
street scale and is positively associated with residential land use. Marginal
treatment effects of residential land use is higher on streets with middle-aged
residents, high fixed employment, and low car ownership. The multimodal public
transit condition reveals significant positive marginal treatment effects at
both scales. To enhance bike-sharing cooperation, we advocate augmenting
bicycle availability in areas with high metro usage and low bus coverage,
alongside implementing adaptable redistribution strategies.
Key Contributions
This study conducts a multiscale analysis using spatial autoregressive and double machine learning models to understand the bike-sharing self-loop phenomenon. It identifies socioeconomic features and geospatial locations (metro stations, street scales) that influence bike redistribution and quantifies the marginal treatment effects of factors like residential land use.
Business Value
Helps bike-sharing operators optimize bike redistribution, improve service equity, and enhance user experience, leading to increased ridership and operational efficiency.