A novel approach for incremental uncertainty rule generation from databases with missing values handling: application to dynamic medical databases.

Sokratis Konias, Ioanna Chouvarda, Ioannis Vlahavas, Nicos Maglaveras
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引用次数: 8

Abstract

Current approaches for mining association rules usually assume that the mining is performed in a static database, where the problem of missing attribute values does not practically exist. However, these assumptions are not preserved in some medical databases, like in a home care system. In this paper, a novel uncertainty rule algorithm is illustrated, namely URG-2 (Uncertainty Rule Generator), which addresses the problem of mining dynamic databases containing missing values. This algorithm requires only one pass from the initial dataset in order to generate the item set, while new metrics corresponding to the notion of Support and Confidence are used. URG-2 was evaluated over two medical databases, introducing randomly multiple missing values for each record's attribute (rate: 5-20% by 5% increments) in the initial dataset. Compared with the classical approach (records with missing values are ignored), the proposed algorithm was more robust in mining rules from datasets containing missing values. In all cases, the difference in preserving the initial rules ranged between 30% and 60% in favour of URG-2. Moreover, due to its incremental nature, URG-2 saved over 90% of the time required for thorough re-mining. Thus, the proposed algorithm can offer a preferable solution for mining in dynamic relational databases.

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一种基于缺失值处理的数据库增量不确定性规则生成方法:在动态医学数据库中的应用。
当前挖掘关联规则的方法通常假设在静态数据库中执行挖掘,在静态数据库中实际上不存在缺少属性值的问题。然而,这些假设并没有保存在一些医疗数据库中,比如家庭护理系统。本文提出了一种新的不确定性规则算法URG-2 (uncertainty rule Generator,不确定性规则生成器),该算法解决了包含缺失值的动态数据库的挖掘问题。该算法只需要初始数据集的一次传递就可以生成项目集,同时使用与支持度和置信度概念相对应的新指标。在两个医疗数据库上对URG-2进行评估,在初始数据集中为每个记录的属性随机引入多个缺失值(比率:5-20%,增量为5%)。与经典方法(忽略缺失值的记录)相比,该算法在从包含缺失值的数据集中挖掘规则方面具有更强的鲁棒性。在所有情况下,保留初始规则的差异在30%到60%之间,支持URG-2。此外,由于其增量性质,URG-2节省了彻底重新开采所需时间的90%以上。因此,该算法为动态关系数据库的挖掘提供了较好的解决方案。
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