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A Fast Algorithm for Approximate Quantiles in High Speed Data Streams

机译:一种快速算法,用于高速数据流中的近似量程

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We present a fast algorithm for computing approximate quantiles in high speed data streams with deterministic error bounds. For data streams of size N where N is unknown in advance, our algorithm partitions the stream into sub-streams of exponentially increasing size as they arrive. For each sub-stream which has a fixed size, we compute and maintain a multi-level summary structure using a novel algorithm. In order to achieve high speed performance, the algorithm uses simple block-wise merge and sample operations. Overall, our algorithms for fixed-size streams and arbitrary-size streams have a computational cost of O(N log(!- log EN)) and an average per-element update cost of O(log log N) if e is fixed.
机译:我们提出了一种快速算法,用于计算具有确定性误差界限的高速数据流中的近似定量。对于预先未知的N个未知的数据流,我们的算法将流分区为尺寸增加大小的子流。对于具有固定大小的每个子流,我们使用新颖算法计算和维护多级摘要结构。为了实现高速性能,算法使用简单的块明智的合并和示例操作。总的来说,我们的固定大小流和任意大小流的算法具有O(n log(! - log en))的计算成本,如果e是固定的,则o(log log n)的平均每元素更新成本。

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