频繁发作的维持

Yue-Shi Lee, Show-Jane Yen
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引用次数: 0

摘要

数据挖掘技术对数据分析有很大的帮助。挖掘频繁事件是该领域的重要任务之一,它允许用户在当前事件的基础上预测未来事件。传统的频繁集挖掘方法采用分层概念,即先生成候选集,然后扫描序列数据以确定它们是否为频繁集,重复扫描序列数据并搜索候选集非常耗时。提出了一种挖掘数据流中情节的方法。我们的方法只需要扫描新增的数据来更新已有的频繁剧集,而不需要扫描原始数据并搜索候选剧集,比其他方法效率更高。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Maintenance of Frequent Episodes
Data mining technology is of great help in data analysis. Mining frequent episode is one of the important task in this field, which allows users to predict future events based on the current events. The traditional approaches for mining frequent episodes use hierarchical concept, that is, generate candidate episode first, and then scan the sequence data to determine whether they are frequent episode, is very time consuming to repeatedly scan the sequence data and search for candidate episodes. This paper proposes a method for mining episode in a data stream. Our method just scans new added data to update existing frequent episodes without scanning original data and searching for candidate episodes, which is more efficient than the other methods.
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