Discovering Interpretable Machine Learning Models in Parallel Coordinates

B. Kovalerchuk, Dustin Hayes
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引用次数: 9

Abstract

This paper contributes to interpretable machine learning via visual knowledge discovery in parallel coordinates. The concepts of hypercubes and hyper-blocks are used as easily understandable by end-users in the visual form in parallel coordinates. The Hyper algorithm for classification with mixed and pure hyper-blocks (HBs) is proposed to discover hyper-blocks interactively and automatically in individual, multiple, overlapping, and non-overlapping setting. The combination of hyper-blocks with linguistic description of visual patterns is presented too. It is shown that Hyper models generalize decision trees. The Hyper algorithm was tested on the benchmark data from UCI ML repository. It allowed discovering pure and mixed HBs with all data and then with 10-fold cross validation. The links between hyper-blocks, dimension reduction and visualization are established. Major benefits of hyper-block technology and the Hyper algorithm are in their ability to discover and observe hyperblocks by end-users including side by side visualizations making patterns visible for all classes. Another advantage of sets of HBs relative to the decision trees is the ability to avoid both data overgeneralization and overfitting.
在平行坐标中发现可解释的机器学习模型
本文通过并行坐标下的视觉知识发现为可解释机器学习做出了贡献。超立方体和超块的概念以并行坐标的视觉形式被最终用户以易于理解的方式使用。提出了混合和纯超块(HBs)分类的Hyper算法,以交互方式自动发现单个、多个、重叠和非重叠设置下的超块。提出了超块与视觉模式语言描述的结合。结果表明,超模型是决策树的泛化模型。在UCI ML存储库的基准数据上对Hyper算法进行了测试。它允许在所有数据中发现纯的和混合的HBs,然后进行10倍交叉验证。建立了超块、降维和可视化之间的联系。超级块技术和超级算法的主要优点在于它们能够发现和观察最终用户的超级块,包括并排可视化,使所有类的模式都可见。相对于决策树,HBs集的另一个优点是能够避免数据过度泛化和过度拟合。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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