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Mining Maximal Approximate Numerical Frequent Patterns from Uncertain Data and Application for Emitter Entity Resolution

机译:从不确定数据中挖掘最大近似数值频率模式及其在辐射体实体分辨率中的应用

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摘要

Numerous fuzzy pattern mining methods have been proposed to address the uncertainty and incompleteness of quantitative data. Traditional fuzzy pattern mining methods generally have to transform the original quantitative values into either crystal items or fuzzy regions first, which is hard to apply without comprehensive domain knowledge. In addition, existing numerical pattern mining methods generally suffer high computational cost. Inspired by the above problems, we put forward an efficient maximal approximate numerical frequent pattern mining (MANFPM) method without fuzzy item or region specification. Experimental results have validated its scalability and effectiveness for application in emitter entity resolution.
机译:已经提出了许多模糊模式挖掘方法来解决定量数据的不确定性和不完整性。传统的模糊模式挖掘方法通常必须首先将原始定量值转换为晶体项或模糊区域,如果没有全面的领域知识,则很难应用。另外,现有的数值模式挖掘方法通常遭受高计算成本。受上述问题的启发,提出了一种有效的最大近似数值频繁模式挖掘(MANFPM)方法。实验结果证明了其可扩展性和有效性,可用于发射体实体解析。

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