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An Analysis of Machine- and Human-Analytics in Classification

机译:机器和人类分析中的分类分析

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In this work, we present a study that traces the technical and cognitive processes in two visual analytics applications to a common theoretic model of soft knowledge that may be added into a visual analytics process for constructing a decision-tree model. Both case studies involved the development of classification models based on the “bag of features” approach. Both compared a visual analytics approach using parallel coordinates with a machine-learning approach using information theory. Both found that the visual analytics approach had some advantages over the machine learning approach, especially when sparse datasets were used as the ground truth. We examine various possible factors that may have contributed to such advantages, and collect empirical evidence for supporting the observation and reasoning of these factors. We propose an information-theoretic model as a common theoretic basis to explain the phenomena exhibited in these two case studies. Together we provide interconnected empirical and theoretical evidence to support the usefulness of visual analytics.
机译:在这项工作中,我们提出了一项研究,该研究跟踪了两个视觉分析应用程序中的技术和认知过程,以了解软知识的通用理论模型,可以将其添加到用于构建决策树模型的视觉分析过程中。这两个案例研究都涉及基于“特征包”方法的分类模型的开发。两者都将使用平行坐标的视觉分析方法与使用信息论的机器学习方法进行了比较。两者都发现,视觉分析方法比机器学习方法具有一些优势,尤其是当稀疏数据集用作基本事实时。我们研究了可能促成此类优势的各种可能因素,并收集了支持这些因素观察和推理的经验证据。我们提出一个信息理论模型作为共同的理论基础,以解释这两个案例研究中出现的现象。我们在一起提供相互联系的经验和理论证据,以支持视觉分析的有用性。

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