題名: | Mining Frequent Itemsets for data streams over Weighted Sliding Windows |
作者: | Tsai, Pauray S.M. Chen, Yao-Ming |
關鍵字: | Data mining Data stream Weighted sliding window model Association rule Frequent itemset |
期刊名/會議名稱: | 2008 ICS會議 |
摘要: | In this paper, we propose a new framework for data stream mining, called the weighted sliding window model. The proposed model allows the user to specify the number of windows for mining, the size of a window, and the weight for each window. Thus, users can specify a higher weight to a more significant data section, which will make the mining result closer to user’s requirements. Based on the weighted sliding window model, we propose a single pass algorithm, called WSW(Weighted Sliding Window mining), to efficiently discover all the frequent itemsets from data streams. By analyzing data characteristics, an improved algorithm, called WSW-Imp, is developed to further reduce the time of deciding whether a candidate itemset is frequent or not. Empirical results show that WSW-Imp outperforms WSW under the weighted sliding windows. |
日期: | 2009-02-12T08:49:04Z |
分類: | 2008年 ICS 國際計算機會議 |
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ce07ics002008000165.pdf | 259.59 kB | Adobe PDF | 檢視/開啟 |
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