Interactive Machine Teaching systems allow users to create customized machine learning models through an iterative process of user-guided training and model assessment. They primarily offer confidence scores of each label or class as feedback for assessment by users. However, we observe that such feedback does not necessarily suffice for users to confirm the behavior of the model. In particular, confidence scores do not always offer the full understanding of what features in the data are used for learning, potentially leading to the creation of an incorrectly-trained model. In this demonstration paper, we present a vision-based interactive machine teaching interface with real-time saliency map visualization in the assessment phase. This visualization can offer feedback on which regions of each image frame the current model utilizes for classification, thus better guiding users to correct the corresponding concepts in the iterative teaching.
翻译:交互式机能教学系统使用户能够通过用户指导培训和模型评估的迭接程序创建定制的机器学习模式,它们主要提供每个标签或类的自信分数,作为用户评估的反馈;然而,我们注意到,这种反馈并不一定足以使用户确认模型的行为;特别是,信心分数并不总是能够充分理解数据中哪些特征用于学习,从而可能导致产生一个不正确培训的模式。在本演示文件中,我们提出了一个基于愿景的互动机器教学界面,与评估阶段的实时突出地图可视化相交接。这种可视化可提供反馈,说明每个图像区域中每个图像框中的现有模型用于分类,从而更好地指导用户纠正迭代教学中的相应概念。