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A Search Space Reduction Methodology For Data Mining In Large Databases

机译:大型数据库中数据挖掘的搜索空间缩减方法

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摘要

Given the present need for Customer Relationship and the increased growth of the size of databases, many new approaches to large database clustering and processing have been attempted. In this work, we propose a methodology based on the idea that statistically proven search space reduction is possible in practice. Two clustering models are generated: one corresponding to the full data set and another pertaining to the sampled data set. The resulting empirical distributions were mathematically tested to verify a tight non-linear significant approximation.
机译:考虑到当前对客户关系的需求以及数据库大小的增长,已经尝试了许多用于大型数据库集群和处理的新方法。在这项工作中,我们提出了一种基于以下思想的方法:在实践中可以统计地证明减少搜索空间。生成了两个聚类模型:一个对应于完整数据集,另一个对应于采样数据集。对所得的经验分布进行数学测试,以验证紧密的非线性有效近似。

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