Ming Yao, Qu Huamin, Bertini Enrico
IEEE Trans Vis Comput Graph. 2018 Aug 20. doi: 10.1109/TVCG.2018.2864812.
With the growing adoption of machine learning techniques, there is a surge of research interest towards making machine learning systems more transparent and interpretable. Various visualizations have been developed to help model developers understand, diagnose, and refine machine learning models. However, a large number of potential but neglected users are the domain experts with little knowledge of machine learning but are expected to work with machine learning systems. In this paper, we present an interactive visualization technique to help users with little expertise in machine learning to understand, explore and validate predictive models. By viewing the model as a black box, we extract a standardized rule-based knowledge representation from its input-output behavior. Then, we design RuleMatrix, a matrix-based visualization of rules to help users navigate and verify the rules and the black-box model. We evaluate the effectiveness of RuleMatrix via two use cases and a usability study.
随着机器学习技术的日益普及,人们对使机器学习系统更透明、更具可解释性的研究兴趣激增。已经开发了各种可视化方法来帮助模型开发者理解、诊断和改进机器学习模型。然而,大量潜在但被忽视的用户是那些对机器学习知之甚少但又需要与机器学习系统打交道的领域专家。在本文中,我们提出了一种交互式可视化技术,以帮助机器学习专业知识较少的用户理解、探索和验证预测模型。通过将模型视为一个黑箱,我们从其输入输出行为中提取出一种标准化的基于规则的知识表示。然后,我们设计了RuleMatrix,一种基于矩阵的规则可视化方法,以帮助用户浏览和验证规则以及黑箱模型。我们通过两个用例和一项可用性研究来评估RuleMatrix的有效性。