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Fast Nearest Neighbor Search with Keywords

机译:使用关键字快速进行最近邻居搜索

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摘要

Conventional spatial queries, such as range search and nearest neighbor retrieval, involve only conditions on objects’ geometric properties. Today, many modern applications call for novel forms of queries that aim to find objects satisfying both a spatial predicate, and a predicate on their associated texts. For example, instead of considering all the restaurants, a nearest neighbor query would instead ask for the restaurant that is the closest among those whose menus contain “steak, spaghetti, brandy” all at the same time. Currently, the best solution to such queries is based on the IR$^2$-tree, which, as shown in this paper, has a few deficiencies that seriously impact its efficiency. Motivated by this, we develop a new access method called the spatial inverted index that extends the conventional inverted index to cope with multidimensional data, and comes with algorithms that can answer nearest neighbor queries with keywords in real time. As verified by experiments, the proposed techniques outperform the IR$^2$-tree in query response time significantly, often by a factor of orders of magnitude.
机译:常规的空间查询(例如范围搜索和最近邻检索)仅涉及对象的几何属性的条件。如今,许多现代应用程序都要求新颖的查询形式,旨在查找既满足空间谓词又满足其关联文本的谓词的对象。例如,不是考虑所有的餐馆,而是最近邻居查询将询问在所有菜单中同时包含“牛排,意大利面条,白兰地”的餐馆中最接近的餐馆。当前,此类查询的最佳解决方案是基于IR $ ^ 2 $ -tree,如本文所示,该树存在一些严重影响其效率的缺陷。因此,我们开发了一种称为空间倒排索引的新访问方法,该方法扩展了传统的倒排索引以应对多维数据,并提供了可以用关键字实时回答最近邻居查询的算法。通过实验验证,所提出的技术在查询响应时间方面明显优于IR $ ^ 2 $ -tree,通常提高了几个数量级。

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