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Set Aggregation Network as a Trainable Pooling Layer

机译:将聚合网络设置为培训池层

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Global pooling, such as max- or sum-pooling, is one of the key ingredients in deep neural networks used for processing images, texts, graphs and other types of structured data. Based on the recent DeepSets architecture proposed by Zaheer et al. (NIPS 2017), we introduce a Set Aggregation Network (SAN) as an alternative global pooling layer. In contrast to typical pooling operators, SAN allows to embed a given set of features to a vector representation of arbitrary size. We show that by adjusting the size of embedding, SAN is capable of preserving the whole information from the input. In experiments, we demonstrate that replacing global pooling layer by SAN leads to the improvement of classification accuracy. Moreover, it is less prone to overfitting and can be used as a regularizer.
机译:诸如最大或总和池的全球池是深度神经网络中的关键成分之一,用于处理图像,文本,图形和其他类型的结构化数据。基于Zaheer等人提出的近期艺术架构。 (NIPS 2017),我们将一个集合网络(SAN)介绍为替代全局池层。与典型的池操作符相比,SAN允许将特定的一组特征嵌入到任意大小的向量表示。我们表明,通过调整嵌入的大小,SAN能够从输入中保留整个信息。在实验中,我们证明了SAN替代全球汇集层,导致分类准确性的提高。此外,它不太容易发生,并且可以用作常规器。

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