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EWGen: Automatic Generation of Item Weights for Weighted Association Rule Mining

机译:EWGen:自动生成加权关联规则挖掘的项目权重

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Association Rule Mining is an important data mining technique that has been widely used as an automatic rule generation method. While having outstanding success in many different application domains, it also has the potential to generate a vast number of rules, many of which are of little interest to the user. Weighted Association Rule Mining (WARM) overcomes this problem by assigning weights to items thus enabling interesting rules to be ranked ahead of less interesting ones and making it easier for the user to determine which rules are the most useful. Past research on WARM assumes that users have the necessary knowledge to supply item weights. In this research we relax this assumption by deriving item weights based on interactions between items. Our experimentation shows that the rule bases produced by our scheme produces more compact rule bases with a higher information content than standard rule generation methods.
机译:关联规则挖掘是一种重要的数据挖掘技术,已广泛用作自动规则生成方法。尽管在许多不同的应用程序领域中都取得了出色的成功,但它也有可能生成大量规则,其中许多规则对用户而言并不重要。加权关联规则挖掘(WARM)通过为项目分配权重来克服此问题,从而使有趣的规则能够排在较不有趣的规则之前,并使用户更容易确定哪些规则最有用。过去有关WARM的研究假设用户具有提供物品重量的必要知识。在这项研究中,我们通过基于项目之间的交互作用得出项目权重来放宽此假设。我们的实验表明,与标准规则生成方法相比,我们的方案生成的规则库可以生成更紧凑的规则库,并具有更高的信息含量。

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