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A Network Architecture for Multi-Multi-Instance Learning

机译:用于多重实例学习的网络架构

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摘要

We study an extension of the multi-instance learning problem where examples are organized as nested bags of instances (e.g., a document could be represented as a bag of sentences, which in turn are bags of words). This framework can be useful in various scenarios, such as graph classification, image classification and translation-invariant pooling in convolutional neural network. In order to learn multi-multi instance data, we introduce a special neural network layer, called bag-layer, whose units aggregate sets of inputs of arbitrary size. We prove that the associated class of functions contains all Boolean functions over sets of sets of instances. We present empirical results on semi-synthetic data showing that such class of functions can be actually learned from data. We also present experiments on citation graphs datasets where our model obtains competitive results.
机译:我们研究了多实例学习问题的扩展,其中示例被组织为嵌套的实例(例如,文件可以表示为一袋句子,这反过来是单词的袋子)。此框架可以在各种场景中有用,例如卷积神经网络中的图形分类,图像分类和翻译 - 不变池。为了学习多种实例数据,我们介绍了一个特殊的神经网络层,称为袋层,其单位聚合任意大小的输入集。我们证明关联类函数包含在一组实例上的所有布尔函数。我们在半合成数据上呈现了实证结果,表明可以从数据中实际学习此类功能。我们还对引文图数据集进行了实验,其中我们的模型获得了竞争结果。

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