Route recommendation is one of the most widely used location-based services nowadays, as it is vital for nice-driving experience and smooth public traffic. Given a pair of user-specified origin and destination, a route recommendation service aims to provide users with the routes of the best travelling experience according to given criteria. However, even the routes recommended by the big-thumb service providers can deviate significantly from the ones travelled by experienced drivers, which motivates the previous research that leverages crowds’ knowledge to improve the recommendation quality. Since route recommendation is normally an online task, low-latency response to drivers’ queries is required in this kind of systems. Unfortunately, latency of crowdsourced systems is usually high, because they need to generate tasks and wait for workers’ feedbacks before answering queries. To address this issue, we extend our previous system—CrowdPlanner—by proposing some strategies to reuse existing answers (truths) to deal with newly coming queries more efficiently. A prototype system has been deployed to many voluntary mobile clients and extensive tests on real-scenario queries have shown the superiority of our system in comparison with the results given by map services and popular route-mining algorithms.
CITATION STYLE
Zheng, B., Su, H., Zheng, K., & Zhou, X. (2016). Landmark-Based Route Recommendation with Crowd Intelligence. Data Science and Engineering, 1(2), 86–100. https://doi.org/10.1007/s41019-016-0013-1
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