Capturing Usage Patterns in Bike Sharing System via Multilayer Network Fused Lasso
收藏Taylor & Francis Group2025-10-10 更新2026-04-16 收录
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资源简介:
Data collected from a bike-sharing system exhibit complex temporal and spatial features. We analyze shared-bike usage data collected in three large cities at the level of individual stations, accounting for station-specific behavior and covariate effects. For this, we adopt a penalized regression approach with a multilayer network fused Lasso penalty. These fusion penalties are imposed on networks which embed spatio-temporal linkages, and capture the homogeneity in bike usage that is attributed to intricate spatio-temporal features without arbitrarily partitioning the data. On the real-life datasets, we demonstrate that the proposed approach yields competitive predictive performance and provides a new interpretation of the data.
提供机构:
Son, Hyelim; Choi, Yunjin; Cho, Haeran
创建时间:
2025-10-10



