Episode-Rule Mining with Minimal Occurrences via First Local Maximization in Confidence

H. K. Dai
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引用次数: 2

Abstract

An episode rule of associating two episodes represents a temporal implication of the antecedent episode to the consequent episode. Episode-rule mining is a task of extracting useful patterns/episodes from large event databases. We present an episode-rule mining algorithm for finding frequent and confident serial-episode rules via first local-maximum confidence in yielding ideal window widths, if exist, in event sequences based on minimal occurrences constrained by a constant maximum gap. Results from our preliminary empirical study confirm the applicability of the episode-rule mining algorithm for Web-site traversal-pattern discovery, and show that the first local maximization yielding ideal window widths exists in real data but rarely in synthetic random data sets.
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基于置信度的第一次局部最大化最小化事件规则挖掘
将两个情节联系起来的情节规则代表了前一个情节对后一个情节的时间含义。事件规则挖掘是一项从大型事件数据库中提取有用模式/事件的任务。我们提出了一种情景规则挖掘算法,该算法通过第一个局部最大置信度来发现频繁和可靠的串行情景规则,如果存在,则在基于最小事件的事件序列中,由恒定最大间隙约束的理想窗宽。我们的初步实证研究结果证实了情节规则挖掘算法在网站遍历模式发现中的适用性,并表明产生理想窗口宽度的第一个局部最大化存在于真实数据中,而很少存在于合成随机数据集中。
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