在Spark中以最低成本发现动作规则

A. Tzacheva, A. Bagavathi, Lavanya Ayila
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引用次数: 9

摘要

操作规则或可操作模式是数据挖掘中的一种基于规则的方法,它向用户推荐特定的操作,以实现期望的结果或目标。世界上的数据量正以指数级的速度增长,几乎每两年翻一番。像Hadoop和Spark这样的分布式计算平台已经简化了这种高速数据的计算。利用数据挖掘领域的这些前沿技术来处理大量数据可以提高性能,并允许用户在快速周转时间内从大型数据集中获得见解。在本文中,我们提出了一种发现低成本可操作模式的方法,并提供了可操作的建议。我们利用Apache Spark框架将该算法应用于分布式环境。我们用交通和医疗领域的两个数据集来评估算法的性能。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Discovery of Action Rules at Lowest Cost in Spark
Action Rules or Actionable patterns is a type of rule-based approach in data mining that recommends to a user specific actions, in order to achieve a desired result or goal. The amount of data in the world is growing at an exponential rate, doubling almost every two years. Distributed computing platforms like Hadoop and Spark, have eased the computation of this high velocity data. Leveraging these cutting-edge technologies in the field of Data Mining to process huge volumes of data can improve the performance and allow user to gain insights from large datasets with quick turnaround time. In this paper, we present an approach for discovering low cost actionable patterns, and provide actionable recommendations. We adapt this algorithm to distributed environment using Apache Spark framework. We evaluate the performance of the algorithm with two datasets in transportation and medical domain.
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