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Query-constraint-based mining of association rules for exploratory analysis of clinical datasets in the National Sleep Research Resource

机译:基于查询约束的关联规则挖掘用于国家睡眠研究资源中临床数据集的探索性分析

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摘要

BackgroundAssociation Rule Mining (ARM) has been widely used by biomedical researchers to perform exploratory data analysis and uncover potential relationships among variables in biomedical datasets. However, when biomedical datasets are high-dimensional, performing ARM on such datasets will yield a large number of rules, many of which may be uninteresting. Especially for imbalanced datasets, performing ARM directly would result in uninteresting rules that are dominated by certain variables that capture general characteristics.
机译:背景技术关联规则挖掘(ARM)已被生物医学研究人员广泛用于执行探索性数据分析并揭示生物医学数据集中变量之间的潜在关系。但是,当生物医学数据集是高维的时,对此类数据集执行ARM将产生大量规则,其中许多规则可能并不有趣。特别是对于不平衡的数据集,直接执行ARM将导致不受欢迎的规则,这些规则由捕获一般特征的某些变量控制。

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