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Interactive Discovery of Interesting Subgroup Sets

机译:有趣的子组集的互动发现

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Although subgroup discovery aims to be a practical tool for exploratory data mining, its wider adoption is hampered by redundancy and the re-discovery of common knowledge. This can be remedied by parameter tuning and manual result filtering, but this requires considerable effort from the data analyst. In this paper we argue that it is essential to involve the user in the discovery process to solve these issues. To this end, we propose an interactive algorithm that allows a user to provide feedback during search, so that it is steered towards more interesting subgroups. Specifically, the algorithm exploits user feedback to guide a diverse beam search. The empirical evaluation and a case study demonstrate that uninteresting subgroups can be effectively eliminated from the results, and that the overall effort required to obtain interesting and diverse subgroup sets is reduced. This confirms that within-search interactivity can be useful for data analysis.
机译:虽然子群发现旨在成为探索性数据挖掘的实用工具,但其更广泛的采用受到冗余和常识的再发现。这可以通过参数调整和手动结果过滤来纠正,但这需要数据分析师的大量努力。在本文中,我们认为涉及用户在发现过程中解决这些问题。为此,我们提出了一种交互式算法,其允许用户在搜索期间提供反馈,以便对更有趣的子组进行转向。具体地,该算法利用用户反馈来指导各种波束搜索。实证评价和案例研究表明,可以从结果有效地消除不感兴趣的亚组,并且减少了获得有趣和多样化的子组集所需的整体努力。这证实,搜索范围内的交互性可用于数据分析。

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