Interpreting Black-Box Classifiers Using Instance-Level Visual Explanations

Paolo Tamagnini, Josua Krause, Aritra Dasgupta, E. Bertini
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引用次数: 62

Abstract

To realize the full potential of machine learning in diverse real-world domains, it is necessary for model predictions to be readily interpretable and actionable for the human in the loop. Analysts, who are the users but not the developers of machine learning models, often do not trust a model because of the lack of transparency in associating predictions with the underlying data space. To address this problem, we propose Rivelo, a visual analytics interface that enables analysts to understand the causes behind predictions of binary classifiers by interactively exploring a set of instance-level explanations. These explanations are model-agnostic, treating a model as a black box, and they help analysts in interactively probing the high-dimensional binary data space for detecting features relevant to predictions. We demonstrate the utility of the interface with a case study analyzing a random forest model on the sentiment of Yelp reviews about doctors.
使用实例级可视化解释解释黑箱分类器
为了在不同的现实世界领域实现机器学习的全部潜力,有必要使模型预测易于解释和可操作,以供处于循环中的人类使用。分析师是机器学习模型的用户,而不是开发人员,他们通常不信任模型,因为在将预测与底层数据空间联系起来时缺乏透明度。为了解决这个问题,我们提出了Rivelo,这是一个可视化的分析界面,它使分析人员能够通过交互式地探索一组实例级解释来理解二元分类器预测背后的原因。这些解释与模型无关,将模型视为黑盒子,它们帮助分析人员交互式地探测高维二进制数据空间,以检测与预测相关的特征。我们通过一个案例研究展示了该界面的实用性,该案例分析了Yelp上关于医生评论的情绪的随机森林模型。
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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