论文标题
在多个实例学习中进行关键实例检测的稀疏网络反转
Sparse Network Inversion for Key Instance Detection in Multiple Instance Learning
论文作者
论文摘要
多个实例学习(MIL)涉及预测一袋实例的单个标签,鉴于在袋级处的正或负标签,而无需在训练阶段访问每个实例的标签。由于一个正袋既包含正面和负面实例,因此通常需要检测一组实例为正面袋时检测正实例(关键实例)。基于注意力的Deep MIL模型是袋级分类和关键实例检测(KID)的最新进步。但是,如果正面袋中的正面和负面实例无法明确区分,则基于注意力的Deep MIL模型的孩子表现有限,因为注意力评分偏向很少的积极实例。在本文中,我们提出了一种改善孩子任务中基于注意力的深MIL模型的方法。主要思想是使用神经网络倒置来查找哪些实例为受过训练的MIL模型产生的行李级预测做出了贡献。此外,我们将稀疏性约束纳入神经网络倒置中,从而导致稀疏的网络反转,该反转是通过近端梯度方法解决的。基于MNIST的图像MIL数据集和两个现实世界组织病理学数据集的数值实验验证了我们方法的有效性,证明孩子的性能得到显着提高,同时保持行李级预测的性能。
Multiple Instance Learning (MIL) involves predicting a single label for a bag of instances, given positive or negative labels at bag-level, without accessing to label for each instance in the training phase. Since a positive bag contains both positive and negative instances, it is often required to detect positive instances (key instances) when a set of instances is categorized as a positive bag. The attention-based deep MIL model is a recent advance in both bag-level classification and key instance detection (KID). However, if the positive and negative instances in a positive bag are not clearly distinguishable, the attention-based deep MIL model has limited KID performance as the attention scores are skewed to few positive instances. In this paper, we present a method to improve the attention-based deep MIL model in the task of KID. The main idea is to use the neural network inversion to find which instances made contribution to the bag-level prediction produced by the trained MIL model. Moreover, we incorporate a sparseness constraint into the neural network inversion, leading to the sparse network inversion which is solved by the proximal gradient method. Numerical experiments on an MNIST-based image MIL dataset and two real-world histopathology datasets verify the validity of our method, demonstrating the KID performance is significantly improved while the performance of bag-level prediction is maintained.