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首页> 外文期刊>Intelligent data analysis >Subgroup discovery in data sets with multi-dimensional responses
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Subgroup discovery in data sets with multi-dimensional responses

机译:具有多维响应的数据集中的子组发现

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摘要

Most of the present subgroup discovery approaches aim at finding subsets of attribute-value data with unusual distribution of a single output variable. In general, real-life problems may be described with richer, multi-dimensional descriptions of the outcome. The discovery task in such domains is to find subsets of data instances with similar outcome description that are separable from the rest of the instances in the input space. We have developed a technique that directly addresses this problem and uses a combination of agglomerative clustering to find subgroup candidates in the space of output attributes, and predictive modeling to score and describe these candidates in the input attribute space. Experiments with the proposed method on a set of synthetic and on a real social survey data set demonstrate its ability to discover relevant and interesting subgroups from the data with multi-dimensional fesponses.
机译:当前大多数子组发现方法旨在寻找具有单个输出变量异常分布的属性值数据子集。通常,可以用更丰富的多维结果描述来描述现实生活中的问题。在此类域中的发现任务是查找具有相似结果描述的数据实例的子集,这些子集可与输入空间中的其余实例分开。我们已经开发出一种直接解决此问题的技术,并使用凝聚聚类的组合在输出属性空间中找到子组候选者,并通过预测建模对输入属性空间中的这些候选者进行评分和描述。在一组综合的和真实的社会调查数据集上使用该方法进行的实验表明,该方法能够从具有多维特征的数据中发现相关和有趣的子组。

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