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An Approach to Automatically Extract Predictive Properties from Nominal Attributes in Relational Databases

机译:一种从关系数据库的名义属性中自动提取预测属性的方法

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Feature engineering is a fundamental step in data mining and yet it is both difficult and expensive. Hand-crafting features is not only a time-consuming task that requires specific domain knowledge, it also may prevent new information to emerge. The extraction of meaningful features from relational data is particularly difficult due to complex relationships between tables. In the last decade there is an emerging trend towards automating the process of constructing propositional features from relational data and such approaches have been successfully used for solving numerous real-world problems. Despite their success, most of them lack an adequate support of nominal attributes. We present a new approach helping propositionalization methods to extract meaningful features from nominal attributes and improve their predictive performance. In an experimental evaluation on three datasets we demonstrate that the proposed technique is capable of producing novel features that are highly correlated with the target attribute. Furthermore, those features can reveal relationships among the distinct categorical values allowing to compare and order them. Finally, experimental results show that those new features can significantly improve the predictive performance in classification tasks.
机译:特征工程是数据挖掘的基本步骤,但是既困难又昂贵。手工制作功能不仅是一项耗时的任务,需要特定的领域知识,而且还可能阻止出现新信息。由于表之间的复杂关系,从关系数据中提取有意义的特征特别困难。在过去的十年中,出现了一种从关系数据构造命题特征的过程自动化的新兴趋势,并且这种方法已成功用于解决众多现实问题。尽管取得了成功,但大多数都缺乏对名义属性的充分支持。我们提出了一种新方法,可帮助命题化方法从名义属性中提取有意义的特征并改善其预测性能。在对三个数据集的实验评估中,我们证明了所提出的技术能够产生与目标属性高度相关的新颖特征。此外,这些功能可以揭示不同类别值之间的关系,从而可以对其进行比较和排序。最后,实验结果表明,这些新功能可以显着提高分类任务的预测性能。

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