高维数据集频繁项集挖掘研究综述

Mohammad Arsyad Mohd Yakop, S. Mutalib, S. A. Rahman
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引用次数: 2

摘要

如今,有大量的大数据收集,要了解其模式需要进行深入的分析。分析大数据将高度依赖于目的,所涉及的任务将是多种多样的。其中一个重要的任务是频繁项集挖掘,为了提高挖掘过程的效率和有效性,该策略已经在许多方面得到了发展。本文简要回顾了从1998年到2013年的挖掘频繁项集算法,主要关注最大和封闭频繁项集。我们主要从三个方面讨论了这些算法:搜索策略、空间缩减方法和数据表示。这三个主要领域被总结为优化策略,旨在提高效率和可扩展性,在不同的领域使用不同的方法来适应数据集的大量增长。这项工作有利于研究人员根据自己的目的设计和改进算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Review of Frequent Itemsets Mining in High Dimensional Dataset
Nowadays, there are abundant of big data collection and to understand its patterns would need a thorough analysis. Analyzing big data would depend highly on the purpose and the tasks involved would be various. One of the significant tasks is frequent itemsets mining and the strategy has been evolved in many ways in order to improve the efficiency and effectiveness of the mining process. In this paper, we briefly reviewed mining frequent itemsets algorithms from year 1998 until year 2013 that focus on maximal and closed frequent itemsets. We discussed these algorithms based on three main areas namely: the searching strategy, space reduction method, and data representation. These three main areas are concluded as the optimization strategy and are designed to improve the efficiency and scalability using a different approach in different areas to adapt to numerous growth of the dataset. This work is beneficial for researchers in designing and enhancing the algorithm based on their own purposes.
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