每周从时间数据集中挖掘模糊模式

Husamuddin
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引用次数: 0

摘要

从时态数据集中提取模糊模式的过程是一个众所周知的数据挖掘问题。周模式就是这样一个例子,它反映了每周有一些模糊时间间隔的模式。这个过程包括两个步骤。首先查找频繁集,其次查找每周在一定时间间隔内出现的关联规则。大多数模糊模式都集中在用户定义的模式上。然而,在某些应用程序中,用户没有数据集先验知识的概率更大。这样,就造成了丢失相关的模糊性问题。自然语言的限制也限制了用户指定相同的内容。本文提出了一种提取特定模糊时间框架内每周发生的模式的方法,模糊时间框架由该方法本身生成。实验结果证明了该方法的有效性
本文章由计算机程序翻译,如有差异,请以英文原文为准。
The Weekly Mining of Fuzzy Patterns from Temporal Datasets
The process of extracting fuzzy patterns from temporal datasets is a well known data mining problem. Weekly pattern is one such example where it reflects a pattern with some fuzzy time interval every week. This process involves two steps. Firstly, it finds frequent sets and secondly, it finds the association rules that occur in certain time intervals weekly. Most of the fuzzy patterns are concentrated as user defined. However, the probability of user not having prior knowledge of datasets being used in some applications is more. Thus, resulting in the loss of fuzziness related to the problem. The limitation of the natural language also bounds the user in specifying the same. This paper, proposes a method of extracting patterns that occur weekly in a particular fuzzy time frame and the fuzzy time frame is generated by the method itself. The efficacy of the method is backed by the experimental results
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