Learning from noisy labels is an important concern because of the lack of accurate ground-truth labels in plenty of real-world scenarios. In practice, various approaches for this concern first make some corrections corresponding to potentially noisy-labeled instances, and then update predictive model with information of the made corrections. However, in specific areas, such as medical histopathology whole slide image analysis (MHWSIA), it is often difficult or even impossible for experts to manually achieve the noisy-free ground-truth labels which leads to labels with complex noise. This situation raises two more difficult problems: 1) the methodology of approaches making corrections corresponding to potentially noisy-labeled instances has limitations due to the complex noise existing in labels; and 2) the appropriate evaluation strategy for validation/testing is unclear because of the great difficulty in collecting the noisy-free ground-truth labels. In this paper, we focus on alleviating these two problems. For the problem 1), we present one-step abductive multi-target learning (OSAMTL) that imposes a one-step logical reasoning upon machine learning via a multi-target learning procedure to constrain the predictions of the learning model to be subject to our prior knowledge about the true target. For the problem 2), we propose a logical assessment formula (LAF) that evaluates the logical rationality of the outputs of an approach by estimating the consistencies between the predictions of the learning model and the logical facts narrated from the results of the one-step logical reasoning of OSAMTL. Applying OSAMTL and LAF to the Helicobacter pylori (H. pylori) segmentation task in MHWSIA, we show that OSAMTL is able to enable the machine learning model achieving logically more rational predictions, which is beyond various state-of-the-art approaches in handling complex noisy labels.
翻译:从噪音标签中学习是一个重要关切,因为在大量现实世界情景中缺乏准确的地面真实标签。在实践中,各种关注方法首先对潜在的噪音标签事件做出某些更正,然后更新预测模型,提供已校正的信息。然而,在特定领域,例如医学的生理病理学整个幻灯片图像分析(MHWSIA),专家往往难以甚至不可能手动实现无噪音的地面真实标签,从而导致有复杂噪音的标签。这种情况提出了两个更困难的问题:1) 纠正可能噪音标签事件的方法方法,由于标签中存在复杂的噪音,有些纠正方法有局限性;以及2 用于验证/测试的适当评价战略不明确,因为收集无噪音的地面图示标签非常困难。在本文中,我们侧重于缓解这两个问题。关于问题1,我们提出一阶梯式多目标学习(OSAMTL),在机器学习多目标的逻辑逻辑推理学方法上存在一步子逻辑逻辑逻辑逻辑逻辑逻辑逻辑逻辑逻辑逻辑推理学,我们学习一个逻辑模型,学习O-LML的逻辑测算结果,我们学习一个逻辑测算的预算。