Paper
19 June 2017 Mining maximal approximate numerical frequent patterns from uncertain data and application for emitter entity resolution
Author Affiliations +
Proceedings Volume 10443, Second International Workshop on Pattern Recognition; 104431I (2017) https://doi.org/10.1117/12.2280284
Event: Second International Workshop on Pattern Recognition, 2017, Singapore, Singapore
Abstract
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.
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Xin Xu "Mining maximal approximate numerical frequent patterns from uncertain data and application for emitter entity resolution", Proc. SPIE 10443, Second International Workshop on Pattern Recognition, 104431I (19 June 2017); https://doi.org/10.1117/12.2280284
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KEYWORDS
Data mining

Fuzzy logic

Mining

Fermium

Frequency modulation

Crystals

Data conversion

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