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Product Quantized Translation for Fast Nearest Neighbor Search

机译:快速最近邻搜索的产品量化翻译

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This paper proposes a simple nearest neighbor search algorithm, which provides the exact solution in terms of the Euclidean distance efficiently. Especially, we present an interesting approach to improve the speed of nearest neighbor search by proper translations of data and query although the task is inherently invariant to the Euclidean transformations. The proposed algorithm aims to eliminate nearest neighbor candidates effectively using their distance lower bounds in nonlinear embedded spaces, and further improves the lower bounds by transforming data and query through product quantized translations. Although our framework is composed of simple operations only, it achieves the state-of-the-art performance compared to existing nearest neighbor search techniques, which is illustrated quantitatively using various large-scale benchmark datasets in different sizes and dimensions.
机译:本文提出了一种简单的最近邻南搜索算法,其在有效地提供了欧几里德距离的精确解决方案。 特别是,我们提出了一种有趣的方法来提高最近的邻居搜索的速度通过适当的数据和查询进行正确翻译,尽管任务本质上是不变的欧几里德转换。 所提出的算法旨在通过在非线性嵌入式空间中使用它们的距离下限来消除最近的邻居候选,并且通过通过产品量化翻译来通过转换数据和查询来改善下限。 虽然我们的框架仅由简单的操作组成,但是与现有的最近邻搜索技术相比,实现了最先进的性能,但是,与现有的最近邻接搜索技术相比,这是用不同尺寸和尺寸的各种大规模基准数据集来定量地说明的。

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