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A Minimal Variance Estimator for the Cardinality of Big Data Set Intersection

机译:大数据集交叉口基数的最小方差估计器

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摘要

In recent years there has been a growing interest in developing "streaming algorithms" for efficient processing and querying of continuous data streams. These algorithms seek to provide accurate results while minimizing the required storage and the processing time, at the price of a small inaccuracy in their output. A fundamental query of interest is the intersection size of two big data streams. This problem arises in many different application areas, such as network monitoring, database systems, data integration and information retrieval. In this paper we develop a new algorithm for this problem, based on the Maximum Likelihood (ML) method. We show that this algorithm outperforms all known schemes in terms of the estimation's quality (lower variance) and that it asymptotically achieves the optimal variance.
机译:近年来,在开发“流算法”中,在开发“流算法”中,有效地处理和查询连续数据流。 这些算法寻求提供准确的结果,同时最大限度地减少所需的存储和处理时间,以其输出的小不准确。 感兴趣的基本查询是两个大数据流的交点。 许多不同的应用领域,例如网络监视,数据库系统,数据集成和信息检索。 在本文中,我们基于最大似然(ML)方法,开发了一种新的算法。 我们表明该算法在估计的质量(较低的方差)方面优于所有已知方案,并且它渐近地实现了最佳方差。

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