Indexing algorithm based on storing additional distances in metric space for multi-vantage-point tree

Q3 Mathematics
Igor Akeksandrov, Vladimir Fomin
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引用次数: 0

Abstract

Introduction: The similarity search paradigm is used in various computational tasks, such as classification, data mining, pattern recognition, etc. Currently, the technology of tree-like metric access methods occupies a significant place among search algorithms. The classical problem of reducing the time of similarity search in metric space is relevant for modern systems when processing big complex data. Due to multidimensional nature of the search algorithm effectiveness problem, local research in this direction is in demand, constantly bringing useful results. Purpose: To reduce the computational complexity of tree search algorithms in problems involving metric proximity. Results: We developed a search algorithm for a multi-vantage-point tree, based on the priority node-processing queue. We mathematically formalized the problems of additional calculations and ways to solve them. To improve the performance of similarity search, we have proposed procedures for forming a priority queue of processing nodes and reducing the number of intersections of same level nodes. Structural changes in the multi-vantage-point tree and the use of minimum distances between vantage points and node subtrees provide better search efficiency. More accurate determination of the distance from the search object to the nodes and the fact that the search area intersects with a tree node allows you to reduce the amount of calculations. Practical relevance: The resulting search algorithms need less time to process information due to an insignificant increase in memory requirements. Reducing the information processing time expands the application boundaries of tree metric indexing methods in search problems involving large data sets.
基于度量空间中附加距离存储的多优势点树索引算法
简介:相似度搜索范式用于各种计算任务,如分类、数据挖掘、模式识别等。目前,树状度量访问方法技术在搜索算法中占有重要地位。在度量空间中减少相似性搜索时间是现代系统处理大型复杂数据的一个经典问题。由于搜索算法有效性问题的多维性,这方面的局部研究需求很大,不断带来有益的成果。目的:降低树搜索算法在度量接近问题中的计算复杂度。结果:我们开发了一种基于优先节点处理队列的多优势点树搜索算法。我们从数学上形式化了附加计算的问题和解决它们的方法。为了提高相似性搜索的性能,我们提出了形成处理节点优先队列和减少同级节点交集数量的方法。多优势点树的结构变化和优势点与节点子树之间最小距离的使用提供了更好的搜索效率。更准确地确定从搜索对象到节点的距离,以及搜索区域与树节点相交的事实,使您可以减少计算量。实际相关性:由于内存需求的轻微增加,结果搜索算法需要更少的时间来处理信息。减少信息处理时间扩展了树度量索引方法在大数据集搜索问题中的应用范围。
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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来源期刊
Informatsionno-Upravliaiushchie Sistemy
Informatsionno-Upravliaiushchie Sistemy Mathematics-Control and Optimization
CiteScore
1.40
自引率
0.00%
发文量
35
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