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K-Nearest Neighbor Search for Fuzzy Objects

机译:k - 最近邻权搜索模糊物体

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The K-Nearest Neighbor search (kNN) problem has been investigated extensively in the past due to its broad range of applications. In this paper we study this problem in the context of fuzzy objects that have indeterministic boundaries. Fuzzy objects play an important role in many areas, such as biomedical image databases and GIS. Existing research on fuzzy objects mainly focuses on modelling basic fuzzy object types and operations, leaving the processing of more advanced queries such as kNN query untouched. In this paper, we propose two new kinds of kNN queries for fuzzy objects, Ad-hoc kNN query (AKNN) and Range kNN query (RKNN), to find the k nearest objects qualifying at a probability threshold or within a probability range. For efficient AKNN query processing, we optimize the basic best-first search algorithm by deriving more accurate approximations for the distance function between fuzzy objects and the query object. To improve the performance of RKNN search, effective pruning rules are developed to significantly reduce the search space and further speed up the candidate refinement process. The efficiency of our proposed algorithms as well as the optimization techniques are verified with an extensive set of experiments using both synthetic and real datasets.
机译:由于其广泛的应用,过去的应用程序已经广泛调查了K-Charelate邻搜索(KNN)问题。在本文中,我们在具有不确定的边界的模糊物体的背景下研究这个问题。模糊物体在许多领域发挥着重要作用,例如生物医学图像数据库和GIS。对模糊对象的现有研究主要集中在建模基本模糊物体类型和操作上,使更高级查询的处理诸如KNN查询的处理。在本文中,我们提出了用于模糊物体的两种新的kNN查询,ad-hockn查询(aknn)和范围knn查询(Rknn),找到概率阈值或概率范围内的k最近物品。为了高效的AKNN查询处理,我们通过导出模糊对象与查询对象之间的距离函数的更准确近似来优化基本最佳首次搜索算法。为了提高RKNN搜索的性能,开发了有效的修剪规则,以显着减少搜索空间并进一步加快候选改进过程。我们所提出的算法以及优化技术的效率通过使用合成和真实数据集进行了广泛的一组实验来验证。

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