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RNN with a Recurrent Output Layer for Learning of Naturalness

机译:具有递归输出层的RNN,用于学习自然

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The behavior of recurrent neural networks with a recurrent output layer (ROL) is described mathematically and it is shown that using ROL is not only advantageous, but is in fact crucial to obtaining satisfactory performance for the proposed naturalness learning. Conventional belief holds that employing ROL often substantially decreases the performance of a network or renders the network unstable, and ROL is consequently rarely used. The objective of this paper is to demonstrate that there are cases where it is necessary to use ROL. The concrete example shown models naturalness in handwritten letters.
机译:数学上描述了具有递归输出层(ROL)的递归神经网络的行为,并且表明使用ROL不仅有利,而且实际上对于获得建议的自然学习而言,对于获得令人满意的性能也至关重要。传统观念认为,使用ROL通常会大大降低网络性能或使网络不稳定,因此很少使用ROL。本文的目的是证明在某些情况下有必要使用ROL。所示的具体示例以手写字母模拟自然性。

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