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eXplainable Cooperative Machine Learning with NOVA

机译:用新星解释合作机器学习

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摘要

In the following article, we introduce a novel workflow, which we subsume under the term "explainable cooperative machine learning" and show its practical application in a data annotation and model training tool called NOVA. The main idea of our approach is to interactively incorporate the 'human in the loop' when training classification models from annotated data. In particular, NOVA offers a collaborative annotation backend where multiple annotators join their workforce. A main aspect is the possibility of applying semi-supervised active learning techniques already during the annotation process by giving the possibility to pre-label data automatically, resulting in a drastic acceleration of the annotation process. Furthermore, the user-interface implements recent eXplainable AI techniques to provide users with both, a confidence value of the automatically predicted annotations, as well as visual explanation. We show in an use-case evaluation that our workflow is able to speed up the annotation process, and further argue that by providing additional visual explanations annotators get to understand the decision making process as well as the trustworthiness of their trained machine learning models.
机译:在下文中,我们介绍了一种新的工作流程,我们在“可解释的合作机器学习”一词下,并显示其在叫做Nova的数据注释和模型培训工具中的实际应用。我们的方法的主要思想是在从注释数据训练分类模型时互动地纳入“循环中”。特别是,新星提供了一个协作注释后端,其中多个注释器加入劳动力。主要方面是通过提供自动预先标记数据的可能性来在注释过程中应用半监督的主动学习技术,从而导致注释过程的急剧加速。此外,用户界面实现最近可解释的AI技术,以向用户提供自动预测注释的置信值,以及视觉解释。我们在一个用例评估中显示了我们的工作流程能够加快注释过程,并进一步争辩说,通过提供额外的视觉解释,注释器可以了解决策过程以及培训的机器学习模型的可信度。

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