CSR+-tree: Cache-conscious Indexing for High-dimensional Similarity Search

Junfeng Dong, Xiaohui Yu
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引用次数: 5

Abstract

In this paper, we propose a novel index structure, the CSR+-tree, to support efficient high-dimensional similarity search in main memory. We introduce quantized bounding spheres (QBSs) that approximate bounding spheres (BSs) or data points. We analyze the respective pros and cons of both QBSs and the previously proposed quantized bounding rectangles (QBRs), and take the best of both worlds by carefully incorporating both of them into the CSR+-tree. We further propose a novel distance computation scheme that eliminates the need for decompressing QBSs or QBRs, which results in significant cost savings. We present an extensive experimental evaluation and analysis of the CSR+-tree, and compare its performance against that of other representative indexes in the literature. Our results show that the CSR+-tree consistently outperforms other index structures.
CSR+-tree:高维相似度搜索的缓存敏感索引
本文提出了一种新的索引结构CSR+-tree,以支持主存中高效的高维相似度搜索。我们引入了近似边界球或数据点的量子化边界球(QBSs)。我们分析了QBSs和之前提出的量化边界矩形(QBRs)各自的优缺点,并通过仔细地将两者结合到CSR+树中来吸取两者的优点。我们进一步提出了一种新的距离计算方案,该方案消除了解压缩QBSs或qbr的需要,从而大大节省了成本。我们对CSR+树进行了广泛的实验评估和分析,并将其性能与文献中其他代表性指标进行了比较。我们的结果表明,CSR+-树始终优于其他索引结构。
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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