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Shadow: Answering Why-Not Questions on Top-K Spatial Keyword Queries over Moving Objects

机译:阴影:回答为什么 - 在移动对象上的top-k空间关键字查询的问题

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The popularity of mobile terminals has generated massive moving objects with spatio-textual characteristics. A top-k spatial keyword query over moving objects (Top-k SKM query) returns the top-k objects, moving or static, based on a ranking function that considers spatial distance and textual similarity between the query and objects. To the best of our knowledge, there hasn't been any research into the why-not questions on Top-k SKM queries. Aiming at this kind of why-not questions, a two-level index called Shadow and a three-phase query refinement approach based on Shadow are proposed. The first phase is to generate some promising refined queries with different query requirements and filter those unpromising refined queries before executing any promising refined queries. The second phase is to reduce the irrelevant search space in the level 1 of Shadow as much as possible based on the spatial filtering technique, so as to obtain the promising static objects, and to capture promising moving objects in the level 2 of Shadow as fast as possible based on the probability filtering technique. The third phase is to determine which promising refined query will be returned to the user. Finally, a series of experiments are conducted on three datasets to verify the feasibility of our method.
机译:移动终端的普及已经产生了具有三种文本特性的大量移动物体。通过移动对象(Top-K SKM查询)的Top-k Spatial关键字查询返回基于查询和对象之间的空间距离和文本相似性的排名函数返回Top-K对象,移动或静态。据我们所知,对Top-K SKM查询的原因没有任何研究提出了针对这种原因的原因,提出了一种称为阴影的两级索引和基于阴影的三相查询细化方法。第一阶段是生成一些具有不同查询要求的有前途的精细查询,并在执行任何有前途的精细查询之前过滤那些不受妥协的精细查询。第二阶段基于空间滤波技术尽可能多地减少阴影级别1的无关搜索空间,从而获得有前途的静态对象,并捕获迅速阴影的2级中的有前途的移动物体尽可能基于概率滤波技术。第三阶段是确定哪种有前途的精细查询将返回给用户。最后,在三个数据集上进行了一系列实验,以验证我们方法的可行性。

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