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首页> 外文期刊>Mathematical Problems in Engineering: Theory, Methods and Applications >Parametric Rough Sets with Application to Granular Association Rule Mining
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Parametric Rough Sets with Application to Granular Association Rule Mining

机译:参数粗糙集及其在粒度关联规则挖掘中的应用

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摘要

Granular association rules reveal patterns hidden in many-to-many relationships which are common in relational databases. In recommender systems, these rules are appropriate for cold-start recommendation, where a customer or a product has just entered the system. An example of such rules might be “40% men like at least 30% kinds of alcohol; 45% customers are men and 6% products are alcohol.” Mining such rules is a challenging problem due to pattern explosion. In this paper, we build a new type of parametric rough sets on two universes and propose an efficient rule mining algorithm based on the new model. Specifically, the model is deliberately defined such that the parameter corresponds to one threshold of rules. The algorithm benefits from the lower approximation operator in the new model. Experiments on two real-world data sets show that the new algorithm is significantly faster than an existing algorithm, and the performance of recommender systems is stable.
机译:精细的关联规则揭示了隐藏在关系数据库中常见的多对多关系中的模式。在推荐系统中,这些规则适用于冷启动推荐,即客户或产品刚刚进入系统。例如,“ 40%的男人喜欢至少30%的酒精; 45%的顾客是男性,而6%的产品是酒精。”由于模式爆炸,挖掘这样的规则是一个具有挑战性的问题。在本文中,我们在两个Universe上构建了一种新型的参数粗糙集,并提出了一种基于新模型的有效规则挖掘算法。具体地,故意定义模型,使得参数对应于规则的一个阈值。该算法得益于新模型中的较低近似算子。在两个实际数据集上进行的实验表明,新算法比现有算法快得多,推荐系统的性能稳定。

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