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ComDia+: An Interactive Visual Analytics System for Comparing, Diagnosing, and Improving Multiclass Classifiers

机译:Comdia +:用于比较,诊断和改进多字数分类器的交互式视觉分析系统

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Performance analysis is essential for improving classification models. However, existing performance analysis tools do not provide actionable insights such as the cause of misclassification. Machine learning practitioners face difficulties such as prioritizing model, looking over confusion between classes. In addition, existing performance analysis tools that provide feature-level analysis are difficult to apply to image classification problems. This study has been proposed to solve these difficulties. In this paper, we present an interactive visual analytics system for diagnosing the performance of multiclass classification models. Our system is able to compare multiple models, find weaknesses, and obtain actionable insights for improving models. Our visualization consists of three views for analyzing performance at the class, confusion, and instance levels. We demonstrate our system using MNIST handwritten digits data.
机译:性能分析对于改善分类模型至关重要。但是,现有的性能分析工具不提供可操作的见解,例如错误分类原因。机器学习从业者面临诸如优先模型的困难,探讨了课程之间的混乱。此外,提供特征级别分析的现有性能分析工具难以应用于图像分类问题。已经提出了这项研究来解决这些困难。在本文中,我们提出了一种互动的视觉分析系统,用于诊断多字符分类模型的性能。我们的系统能够比较多种型号,找到缺点,并获得改进模型的可操作见解。我们的可视化由三个视图组成,用于分析类,混淆和实例级别的性能。我们使用Mnist手写数字数据展示我们的系统。

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