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Fast Counting in Machine Learning Applications

机译:在机器学习应用中快速计数

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We propose scalable methods to execute counting queries in machine learning applications. To achieve memory and computational efficiency, we abstract counting queries and their context such that the counts can be aggregated as a stream. We demonstrate performance and scalability of the resulting approach on random queries, and through extensive experimentation using Bayesian networks learning and association rule mining. Our methods significantly outperform commonly used ADtrees and hash tables, and are practical alternatives for processing large-scale data.
机译:我们提出可扩展的方法来在机器学习应用程序中执行计数查询。为了实现内存和计算效率,我们抽象数查询及其上下文,使得计数可以被聚合为流。我们在随机查询中展示了所产生方法的性能和可扩展性,并通过使用贝叶斯网络学习和关联规则挖掘进行广泛的实验。我们的方法明显优于常用的Adtrees和哈希表,是处理大规模数据的实用替代方案。

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