基于关联矩阵的数据流频繁模式预测算法

Yong-gong Ren, Zhiqiang Hu, Jian Wang
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引用次数: 3

摘要

随着数据挖掘的广泛应用,许多数据挖掘应用需要使用过去和当前数据来预测数据的未来状态。针对这种情况,我们提出了一种新的预测数据流中频繁模式的方法,即AMFP-Stream。AMFP-Stream算法可以预测出那些在后续时间窗口中具有高频率潜力的频繁项集,以满足用户的需求。该算法首先将数据转换为0-1矩阵。然后,它将通过裁剪矩阵和比特操作来更新相关矩阵,从中也可以挖掘频繁项集。最后,它将使用当前数据预测下一次可能出现在窗口中的可能的频繁项集。实验结果表明,AMFP-Stream算法在不同实验条件下都能预测出频繁项集,证明该算法是可行的。
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An Algorithm for Predicting Frequent Patterns over Data Streams Based on Associated Matrix
With the wide application of data mining, many data mining applications need to use past and current data to predict the future state of the data. In view of this situation, we propose a new method, namely AMFP-Stream, for predicting frequent patterns over data streams efficiently and effectively. AMFP-Stream algorithm can predict those frequent item sets that have high potential to become frequent in the subsequent time windows to meet users' needs. Firstly, the algorithm converts the data to 0-1 matrix. Then it will update the associated matrix by tailoring the matrix and bitting operations, from which frequent item sets can be mined as well. Finally, it will predict possible frequent item sets that may appear in the windows next time by using the current data. Experimental results show that AMFP-Stream algorithm can predict the frequent item sets in different experimental conditions, therefore, the algorithm is feasible.
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