A Study of Update Methods for BoND-Tree Index on Non-ordered Discrete Vector Data

R. Cherniak, Qiang Zhu, S. Pramanik
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Abstract

There is an increasing demand from numerous applications such as bioinformatics and cybersecurity to efficiently process various types of queries on datasets in a multidimensional Non-ordered Discrete Data Space (NDDS). An NDDS consists of vectors with values coming from a non-ordered discrete domain for each dimension. The BoND-tree index was recently developed to efficiently process box queries on a large dataset from an NDDS on disk. The original work of the BoND-tree focused on developing the index construction and query algorithms. No work has been reported on exploring efficient and effective update strategies for the BoND-tree. In this paper, we study two update methods based on two different strategies for updating the index tree in an NDDS. Our study shows that using the bottom-up update method can provide improved efficiency, comparing to the traditional top-down update method, especially when the number of dimensions for a vector that need to be updated is small. On the other hand, our study also shows that the two update methods have a comparable effectiveness, which indicates that the bottom-up update method is generally more advantageous.
非有序离散向量数据上BoND-Tree索引更新方法研究
生物信息学和网络安全等众多应用越来越需要有效地处理多维非有序离散数据空间(NDDS)中数据集上的各种类型的查询。NDDS由向量组成,其值来自于每个维度的非有序离散域。BoND-tree索引是最近开发的,用于有效地处理来自磁盘上的NDDS的大型数据集上的框查询。BoND-tree最初的工作重点是开发索引构建和查询算法。目前还没有关于bond树的高效更新策略的研究报道。本文研究了基于两种不同策略的索引树更新方法。我们的研究表明,与传统的自顶向下更新方法相比,使用自底向上更新方法可以提高效率,特别是当需要更新的向量维数较少时。另一方面,我们的研究还表明,两种更新方法的有效性相当,这表明自下而上的更新方法通常更有优势。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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