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Hong-Fei Xu, Yu Gu, Jian-Zhong Qi, Jia-Yuan He, Ge Yu. Diversifying Top-k Routes with Spatial Constraints[J]. Journal of Computer Science and Technology, 2019, 34(4): 818-838. DOI: 10.1007/s11390-019-1944-6
Citation: Hong-Fei Xu, Yu Gu, Jian-Zhong Qi, Jia-Yuan He, Ge Yu. Diversifying Top-k Routes with Spatial Constraints[J]. Journal of Computer Science and Technology, 2019, 34(4): 818-838. DOI: 10.1007/s11390-019-1944-6

Diversifying Top-k Routes with Spatial Constraints

  • Trip recommendation has become increasingly popular with the rapid growth of check-in data in locationbased social networks. Most existing studies focused only on the popularity of trips. In this paper, we consider further the usability of trip recommendation results through spatial diversification. We thereby formulate a new type of queries named spatial diversified top-k routes (SDkR) query. This type of queries finds k trip routes with the highest popularity, each of which starts at a given starting point, consumes travel time within a given time budget, and passes through points of interest (POIs) of given categories. Any two trip routes returned are diversified to a certain degree defined by the spatial distance between the two routes. We show that the SDkR problem is NP-hard. We propose two precise algorithms to solve the problem. The first algorithm starts with identifying all candidate routes that satisfy the query constraints, and then searches for the k-route combination with the highest popularity. The second algorithm identifies the candidate routes and builds up the optimal k-route combination progressively at the same time. Further, we propose an approximate algorithm to obtain even higher query efficiency with precision bounds. We demonstrate the effectiveness and efficiency of the proposed algorithms on real datasets. Our experimental results show that our algorithms find popular routes with diversified POI locations. Our approximate algorithm saves up to 90% of query time compared with the baseline algorithms.
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