Balancing clusters to reduce response time variability in large scale image search

R. Tavenard, H. Jégou, L. Amsaleg
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引用次数: 26

Abstract

Many algorithms for approximate nearest neighbor search in high-dimensional spaces partition the data into clusters. At query time, for efficiency, an index selects the few (or a single) clusters nearest to the query point. Clusters are often produced by the well-known k-means approach since it has several desirable properties. On the downside, it tends to produce clusters having quite different cardinalities. Imbalanced clusters negatively impact both the variance and the expectation of query response times. This paper proposes to modify k-means centroids to produce clusters with more comparable sizes without sacrificing the desirable properties. Experiments with a large scale collection of image descriptors show that our algorithm significantly reduces the variance of response times without severely impacting the search quality.
平衡聚类以减少大规模图像搜索中的响应时间变化
在高维空间中,许多近似最近邻搜索算法将数据划分为簇。在查询时,为了提高效率,索引选择最接近查询点的几个(或单个)簇。聚类通常由众所周知的k-means方法产生,因为它具有几个理想的特性。缺点是,它倾向于产生具有完全不同基数的集群。不平衡的集群对查询响应时间的方差和期望都有负面影响。本文提出在不牺牲理想性质的情况下,修改k-均值质心以产生具有更多可比较大小的簇。大量图像描述符的实验表明,我们的算法在不严重影响搜索质量的情况下显著降低了响应时间方差。
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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