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首页> 外文期刊>LIPIcs : Leibniz International Proceedings in Informatics >PUFFINN: Parameterless and Universally Fast FInding of Nearest Neighbors
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PUFFINN: Parameterless and Universally Fast FInding of Nearest Neighbors

机译:PUFFINN:最近邻居的无参数和通用快速查找

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We present PUFFINN, a parameterless LSH-based index for solving the k-nearest neighbor problem with probabilistic guarantees. By parameterless we mean that the user is only required to specify the amount of memory the index is supposed to use and the result quality that should be achieved. The index combines several heuristic ideas known in the literature. By small adaptions to the query algorithm, we make heuristics rigorous. We perform experiments on real-world and synthetic inputs to evaluate implementation choices and show that the implementation satisfies the quality guarantees while being competitive with other state-of-the-art approaches to nearest neighbor search. We describe a novel synthetic data set that is difficult to solve for almost all existing nearest neighbor search approaches, and for which PUFFINN significantly outperform previous methods.
机译:我们提出PUFFINN,这是一种基于LSH的无参数索引,可通过概率保证来解决k最近邻问题。 “无参数”是指仅要求用户指定索引应使用的内存量以及应达到的结果质量。该索引结合了文献中已知的几种启发式思想。通过少量修改查询算法,我们使启发式变得更加严格。我们对真实的和综合的输入进行了实验,以评估实现方案的选择,并表明该实现方案满足质量保证,同时与其他最先进的邻域搜索方法相比具有竞争力。我们描述了一个新的合成数据集,它很难解决几乎所有现有的最近邻居搜索方法,而PUFFINN明显优于以前的方法。

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