The PU-Tree: A Partition-Based Uncertain High-Dimensional Indexing Algorithm

Yi Zhuang
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Abstract

This paper proposes a partition-based uncertain high-dimensional indexing algorithm, called PU-Tree. In the PU-Tree, all (n)data objects are first grouped into some clusters by a k-Means clustering algorithm. Then each object’s corresponding uncertain sphere is partitioned into several slices in terms of the zero-distance. Finally a unified key of each data object is computed by adopting multi-attribute encoding scheme, which are inserted by a B+-tree. Thus, given a query object, its probabilistic range search in high-dimensional spaces is transformed into the search in the single dimensional space with the aid of the PU-Tree. Extensive performance studies are conducted to evaluate the effectiveness and efficiency of the proposed scheme.
pu树:一种基于分区的不确定高维索引算法
提出了一种基于分区的不确定高维索引算法PU-Tree。在PU-Tree中,首先通过k-Means聚类算法将所有(n)个数据对象分组到一些簇中。然后根据零距离将每个目标对应的不确定球划分为若干块。最后采用多属性编码方案计算每个数据对象的统一密钥,并通过B+树插入密钥。这样,给定一个查询对象,借助PU-Tree将其在高维空间的概率范围搜索转化为在单维空间的概率范围搜索。我们进行了广泛的表现研究,以评估拟议计划的成效和效率。
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