基于混合学习框架的空闲出租车利润最大化个性化路线推荐

Hybrid Learning Framework-Based Profit-Maximizing Personalized Route Recommendation for Vacant Taxis

IEEE Transactions on Systems, Man, and Cybernetics: Systems · 2025
被引 1
ABS 3

中文导读

提出一种混合学习框架,通过本地学习司机历史路线和云端学习乘客需求,为空闲出租车推荐个性化巡航路线,以增加利润并减少路线误差。

Abstract

As a complement of public transportation system in modern cities, taxis can provide flexible transportation services for citizens. To increase the profits of taxis, proper cruising routes should be recommended to help vacant taxis find passengers faster. Besides, the cruising tendencies of taxi drivers differ due to the personal cognitions. To this end, we propose a hybrid learning framework-based profit-maximizing personalized route (PMPR) recommendation method for vacant taxis (HL-PPRRM) to obtain and recommend the PMPRs for vacant taxis. HL-PPRRM consists of the local learning on vacant taxis and the global learning on cloud server. Specifically, vacant taxis locally learn the historical cruising routes to predict the personalized routes, while the cloud server globally learns the occupied records to predict the future taxi demand. The obtained PMPRs tally with the cruising tendencies of taxi drivers roughly, and the occupied durations of taxis can be effectively prolonged when vacant taxis cruise along PMPRs. Extensive simulations and comparisons demonstrate the superior performance of our proposed HL-PPRRM, i.e., with the hybrid learning framework, the profits of taxis can be significantly increased, and the average displacement error of PMPRs is very small.

出租车路线推荐混合学习利润最大化