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Dedicated deep neural network architectures and methods for their training

机译:专用的深度神经网络架构及其训练方法

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Deep neural networks are currently very popular trend in artificial intelligence. While such networks are very powerful they are difficult in training. The paper discusses capabilities of different neural network architectures and presents the proposition of new multilayer architecture with additional connections across layers, called Bridged MLP, that is much easier to train that traditional MLP network. Efficiency of suggested approach has been confirmed by several experiments.
机译:深度神经网络目前是人工智能中非常流行的趋势。尽管这样的网络非常强大,但训练起来却很困难。本文讨论了不同神经网络体系结构的功能,并提出了新的多层体系结构的建议,即跨层的附加连接(称为桥接MLP),它比传统的MLP网络更容易训练。建议的方法的有效性已通过几次实验得到证实。

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