On Multi-view Interpretation of Convolutional Neural Networks

H. Khastavaneh, H. Ebrahimpour-Komleh
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引用次数: 1

Abstract

In this study we consider multi-view capabilities of convolutional neural networks as one of the best methods of representation learning. Multi-view learning as a machine learning technique deals with the task of learning from multiple distinct views or multiple distinct feature sets. Moreover, multi-view feature learning attempts to abstract and summarize distinct feature sets for further machine learning and pattern recognition tasks. In contrast to traditional multi-view learning methods, convolutional neural networks are able to generate representations from unstructured raw data; these features are very essential for real world applications. It is concluded that CNNs are inherently multi-view representation learning methods able to handle both natural and artificial views.
卷积神经网络的多视图解释
在本研究中,我们认为卷积神经网络的多视图能力是表征学习的最佳方法之一。多视图学习作为一种机器学习技术,处理从多个不同的视图或多个不同的特征集学习的任务。此外,多视图特征学习试图抽象和总结不同的特征集,以用于进一步的机器学习和模式识别任务。与传统的多视图学习方法相比,卷积神经网络能够从非结构化的原始数据中生成表示;这些特性对于现实世界的应用程序是非常重要的。结果表明,cnn本质上是一种多视图表示学习方法,能够处理自然视图和人工视图。
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