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A decision support method, based on bounded rationality concepts, to reveal feature saliency in clustering problems

机译:一种基于有限理性概念的决策支持方法,用于揭示聚类问题中的特征显着性

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摘要

In many real-life data mining problems, there is no a-priori classification (no target attribute that is known in advance). The lack of a target attribute (target column/class label) makes the division process into a set of groups very difficult to define and construct. The end user needs to exert considerable effort to interpret the results of diverse algorithms because there is no pre-defined reliable "benchmark". To overcome this drawback the current paper proposes a methodology based on bounded-rationality theory. It implements an S-shaped function as a saliency measure to represent the end user's logic to determine the features that characterize each potential group. The methodology is demonstrated on three well-known datasets from the UCI machine-learning repository. The grouping uses cluster analysis algorithms, since clustering techniques do not need a target attribute.
机译:在许多现实生活中的数据挖掘问题中,没有先验分类(没有预先知道的目标属性)。由于缺少目标属性(目标列/类标签),因此很难将划分为一组的过程定义和构造。由于没有预先定义的可靠“基准”,最终用户需要付出大量的努力来解释各种算法的结果。为了克服这个缺点,目前的论文提出了一种基于有限理性理论的方法。它实现了S形功能作为显着性度量,以代表最终用户确定确定每个潜在群体特征的逻辑。在UCI机器学习存储库中的三个众所周知的数据集上演示了该方法。分组使用聚类分析算法,因为聚类技术不需要目标属性。

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