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GMU: A Novel RNN Neuron and Its Application to Handwriting Recognition

机译:GMU:一种新型的RNN神经元及其在手写识别中的应用

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Recurrent neural networks (RNNs) have been widely used in many sequential labeling fields. Decades of research fruits show that artificial neuron as the building blocks plays great role in its success. Different RNN neurons are proposed, such as long-short term memory (LSTM) and gated recurrent unit (GRU), and used in most applications let alone character recognition, to encode the long-term contextual dependencies. Inspired by both LSTM and GRU, a new structure named gated memory unit (GMU) is presented which carries forward their merits. GMU preserves the constant error carousels (CEC) which is devoted to enhance a smooth information flow. GMU also lends both the cell structure of LSTM and the interpolation gates of GRU. The proposed neuron is evaluated on both online English handwriting recognition and online Chinese handwriting recognition tasks in terms of parameter volumes, convergence and accuracy. The results show that GMU is of potential choice in handwriting recognition tasks.
机译:递归神经网络(RNN)已被广泛用于许多顺序标记领域。数十年的研究成果表明,人工神经元作为构建基块在其成功中发挥着重要作用。提出了不同的RNN神经元,例如长期短期记忆(LSTM)和门控循环单元(GRU),并在大多数应用中使用,更不用说字符识别了,以编码长期上下文相关性。受到LSTM和GRU的启发,提出了一种名为门控存储单元(GMU)的新结构,该结构继承了它们的优点。 GMU保留了恒定误差轮播(CEC),该轮播致力于增强顺畅的信息流。 GMU还提供LSTM的单元结构和GRU的插值门。在参数量,收敛性和准确性方面,对提出的神经元进行在线英语手写识别和在线中文手写识别任务的评估。结果表明,GMU在手写识别任务中是潜在的选择。

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