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An embarrassingly simple approach to neural multiple instance classification

机译:一种神经多实例分类的尴尬简单方法

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摘要

Multiple Instance Learning (MIL) is a weak supervision learning paradigm that allows modeling of machine learning problems in which labels are not available for individual examples but only for groups of examples called bags. A positive bag may contain one or more positive examples but it is not known which examples in the bag are positive. All examples in a negative bag belong to the negative class. Such problems arise frequently in fields of computer vision, medical image processing and bioinformatics. Many neural network-based solutions have been proposed in the literature for MIL. However, almost all of them rely on introducing specialized blocks and connectivity in their architectures. In this paper, we present a simple and effective approach to Multiple Instance Learning in neural networks. We propose a simple bag-level ranking loss function that allows Multiple Instance Classification in any neural architecture. We have demonstrated the effectiveness of our proposed method for popular MIL benchmark datasets. Additionally, we have also tested the performance of our method in convolutional neural networks used to model an MIL problem derived from the well-known MNIST dataset. Results show that despite being simpler, our proposed scheme is comparable or better than existing methods in the literature in practical scenarios. Python code files for all the experiments can be found at https://igithub.com/amina01/ESMIL (C) 2019 Elsevier B.V. All rights reserved.
机译:多实例学习(MIL)是一种弱监督学习范式,它允许对机器学习问题进行建模,在该机器学习问题中,标签不适用于单个示例,而仅适用于称为袋的一组示例。阳性袋可以包含一个或多个阳性例子,但尚不清楚袋中哪些例子是阳性的。负数袋中的所有示例均属于负数类别。这些问题在计算机视觉,医学图像处理和生物信息学领域经常出现。 MIL的文献中已经提出了许多基于神经网络的解决方案。但是,几乎所有人都依赖于在其体系结构中引入专用模块和连接性。在本文中,我们提出了一种简单有效的神经网络多实例学习方法。我们提出了一个简单的袋级排名损失函数,该函数允许在任何神经体系结构中进行多实例分类。我们已经证明了我们提出的方法对于流行的MIL基准数据集的有效性。此外,我们还测试了我们的方法在卷积神经网络中的性能,该卷积神经网络用于对从众所周知的MNIST数据集得出的MIL问题进行建模。结果表明,尽管更简单,但在实际情况下,我们提出的方案与文献中的现有方法具有可比性或更好。可以在https://igithub.com/amina01/ESMIL(C)2019 Elsevier B.V.找到所有实验的Python代码文件。保留所有权利。

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