An Improved KNN Algorithm Based on Adaptive Cluster Distance Bounding for High Dimensional Indexing

Huang Hong, Guo Juan, Wang Ben
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引用次数: 6

Abstract

Because of the intense bounding and the distance of the query vector to the cluster bounding is closer to the true distance, filtering out irrelevant clusters by the distance of the query vector to the cluster bounding in the process of similarity search has well reduced the I/O complexity. Hence, the "curse of dimensionality" can be well avoided. We propose an improved KNN search algorithm based on adaptive cluster distance bounding for high dimensional indexing by reducing the CPU cost which was achieved by filtering out unnecessary distance calculations number using the triangle inequality, but with the cost of some overhead and pretreatment. Finally, we verify the improved exact KNN search algorithm has a better performance through some experiments based on a real data set.
基于自适应聚类距离边界的高维索引改进KNN算法
由于查询向量到聚类边界的距离更接近真实距离,因此在相似性搜索过程中,通过查询向量到聚类边界的距离来过滤掉不相关的聚类,可以很好地降低I/O复杂度。因此,可以很好地避免“维度的诅咒”。本文提出了一种改进的基于自适应聚类距离边界的高维索引KNN搜索算法,该算法通过使用三角不等式过滤掉不必要的距离计算次数来降低CPU开销,但需要付出一定的开销和预处理代价。最后,通过一些基于真实数据集的实验,验证了改进的精确KNN搜索算法具有更好的性能。
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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