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Recursive Extraction of Modular Structure from Layered Neural Networks Using Variational Bayes Method

机译:使用变分贝叶斯法从层状神经网络中递归提取模块化结构

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Deep neural networks have made a substantial contribution to the recognition and prediction of complex data in various fields, such as image processing, speech recognition and bioinformatics. However, it is very difficult to discover knowledge from the inference provided by a neural network, since its internal representation consists of many non-linear and hierarchical parameters. To solve this problem, an approach has been proposed that extracts a global and simplified structure for a neural network. Although it can successfully detect such a hidden modular structure, its convergence is not sufficiently stable and is vulnerable to the initial parameters. In this paper, we propose a new deep learning algorithm that consists of recursive back propagation, community detection using a variational Bayes, and pruning unnecessary connections. We show that the proposed method can appropriately detect a hidden inference structure and compress a neural network without increasing the generalization error.
机译:深度神经网络对各种领域的复杂数据的识别和预测进行了大量贡献,例如图像处理,语音识别和生物信息学。然而,非常困难从神经网络提供的推理中发现知识,因为其内部表示由许多非线性和分层参数组成。为了解决这个问题,已经提出了一种提取神经网络的全局和简化结构的方法。虽然它可以成功地检测这种隐藏的模块化结构,但它的收敛性并不足够稳定,并且容易受到初始参数的影响。在本文中,我们提出了一种新的深度学习算法,包括使用变分贝内斯的递归背部传播,社区检测,以及修剪不必要的连接。我们表明该方法可以适当地检测隐藏的推理结构并在不增加泛化误差的情况下压缩神经网络。

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