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利用抽样技术分布式开采可变精度的关联规则
引用本文:王春花,黄厚宽.利用抽样技术分布式开采可变精度的关联规则[J].计算机研究与发展,2000,37(9):1101-1106.
作者姓名:王春花  黄厚宽
作者单位:北方交通大学计算机科学技术系人工智能研究所,北京,100044
基金项目:铁道部科技研究发展计划基金资助!(项目编号 2 0 0 0 X0 3 0 -A)
摘    要:关联规则是数据开采的重要研究内容,利用抽样及元学习技术提出一种快速的分布式开采可变精度的关联规则算法。为了能获得更准确的结果,还给出 采用适当缩小量小支持度和扩大全局检测的候选项集等技术的若干改进算法,最后给出了这种方法与类似方法的比较情况,算法具有效率高和通信量小的特点,尤适合效率比准确性要求更高的场合。

关 键 词:数据开采  可变精度  关联规则  抽样技术  数据库

DISTRIBUTED MINING ADJUSTABLE ACCURACY ASSOCIATION RULES USING SAMPLING
WANG Chun-Hua,HUANG Hou-Kuan.DISTRIBUTED MINING ADJUSTABLE ACCURACY ASSOCIATION RULES USING SAMPLING[J].Journal of Computer Research and Development,2000,37(9):1101-1106.
Authors:WANG Chun-Hua  HUANG Hou-Kuan
Abstract:Association rule mining is an important task of data mining. A fast distributed algorithm for mining adjustable accuracy association rules is presented using sampling and meta learning. In order to acquire more complete results, several variants of the algorithm are also discussed by selecting smaller minimum support and extending global candidate itemsets. The method is compared with similar algorithms. The algorithm is more efficient and has less communicated loads, applicable to those applications where the efficiency could be more important than accuracy results.
Keywords:data mining  distributed algorithm  sampling  meta  learning  adjustable accuracy association rules
本文献已被 CNKI 维普 万方数据 等数据库收录!
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