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Efficient Method for Mining Frequent Itemsets using Temporal Data

机译:使用时间数据挖掘频繁项目集的高效方法

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Temporal data can hold time-stamped information that affects the results of data mining. Customary strategies for finding frequent itemsets accept that datasets are static; also the instigated rules are relevant over the whole dataset. In any case, this is not the situation when data is temporal. The work is done to enhance the proficiency of mining frequent itemsets on temporal data. The patterns can hold in either all or, then again a portion of the intervals. It proposes another method with respect to time interval is called as frequent itemsets mining with time cubes. The concentration is building up an efficient algorithm for this mining issue by broadening the notable a priori algorithm. The thought of time cubes is proposed to handle different time hierarchies. This is the route by which the patterns that happen intermittently, amid a time interval or both, are perceived. Another thickness limit is likewise proposed to take care of the overestimating issue of time periods and furthermore ensure that found patterns are valid.
机译:时间数据可以保持影响数据挖掘结果的时间戳信息。查找频繁项目集的常规策略接受数据集是静态的; IREALIGATED规则也与整个数据集相关。在任何情况下,数据都不是数据是时间的。这项工作是为了提高矿业频繁项集在时间数据上的熟练程度。图案可以以全部或者再次容纳间隔的一部分。它提出了另一个关于时间间隔的方法被称为频繁的项目集与时间立方体挖掘。浓度通过扩展显着的先验算法来构建该挖掘问题的有效算法。建议考虑时间立方体来处理不同的时间层次结构。这是感知在时间间隔或两者中间歇发生的模式的路线。同样提出了另一个厚度限制以照顾高估时间段的问题,并且还要确保发现模式有效。

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