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Relevant Attributes in Formal Contexts

机译:形式上下文中的相关属性

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Computing conceptual structures, like formal concept lattices, is a challenging task in the age of massive data sets. There are various approaches to deal with this, e.g., random sampling, parallelization, or attribute extraction. A so far not investigated method in the realm of formal concept analysis is attribute selection, as done in machine learning. Building up on this we introduce a method for attribute selection in formal contexts. To this end, we propose the notion of relevant attributes which enables us to define a relative relevance function, reflecting both the order structure of the concept lattice as well as distribution of objects on it. Finally, we overcome computational challenges for computing the relative relevance through an approximation approach based on information entropy.
机译:在海量数据集时代,计算概念结构(如形式概念格)是一项具有挑战性的任务。有多种方法可以解决此问题,例如随机采样,并行化或属性提取。形式概念分析领域迄今为止尚未研究的方法是属性选择,就像机器学习中所做的那样。在此基础上,我们介绍了一种在形式上下文中进行属性选择的方法。为此,我们提出了相关属性的概念,该属性使我们能够定义相对相关函数,既反映概念格的顺序结构,又反映概念格上的对象分布。最后,我们克服了通过基于信息熵的近似方法来计算相对相关性的计算难题。

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