2016
DOI: 10.1016/j.knosys.2015.11.009
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Efficient reverse spatial and textual k nearest neighbor queries on road networks

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Cited by 18 publications
(15 citation statements)
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“…Yang et al [11] proposed to extend half-space-based pruning technique to solve the spatial reverse top-k queries and introduced a novel regions-based pruning algorithm according to SLICE [72] that is a regions-based pruning algorithm for reverse k nearest neighbors queries to improve the efficiency. Instead in the Euclidean space, Luo et al [73] investigated reverse spatial and textual k nearest neighbor queries on road networks. Besides, they proposed several spatial keyword pruning techniques to speed up the search.…”
Section: Reverse Query Processingmentioning
confidence: 99%
“…Yang et al [11] proposed to extend half-space-based pruning technique to solve the spatial reverse top-k queries and introduced a novel regions-based pruning algorithm according to SLICE [72] that is a regions-based pruning algorithm for reverse k nearest neighbors queries to improve the efficiency. Instead in the Euclidean space, Luo et al [73] investigated reverse spatial and textual k nearest neighbor queries on road networks. Besides, they proposed several spatial keyword pruning techniques to speed up the search.…”
Section: Reverse Query Processingmentioning
confidence: 99%
“…Note that we still use the Euclidean method to calculate the distance between the GPS data points. L-Similarity: In fact, there exist several methods to measure the similarity of line segments, such as those that are reported in References [13,33,34], as well as cosine similarity. Similar results between line segments are usually used to achieve trajectory clustering and to produce sub-trajectories.…”
Section: Sub-trajectorymentioning
confidence: 99%
“…A lot of other Spatial Keyword Queries variants are also based on TkNN queries, in which the works on these variants try to improve the TkNN queries to be able to process moving objects [44], continuous objects [23], reverse top-k query [35], [22], joint queries [43], [26], or interactive TkNN queries [52]. Besides the works on Spatial Keyword Queries that focus on TkNN queries, some variants of Spatial Keyword Queries have also been proposed, such as the collective Spatial Keyword querying [15], [34], [51], diversified Spatial Keyword search [48], regionbased query [16], scalable continual top-k query [46], reverse spatial and textual k nearest neighbor query [36], spatio-textual data clustering [19], fuzzy keyword search [8], and m-closest keyword queries [50]. However, none of these queries can be classified as route planning queries.…”
Section: Spatial Abstract Queriesmentioning
confidence: 99%