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Representing Compositionality based on Multiple Timescales Gated Recurrent Neural Networks with Adaptive Temporal Hierarchy for Character-Level Language Models

机译:基于多个时间尺度的组成性,具有用于字符级语言模型的自适应时间层次结构的多个时间尺度的组成性

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A novel character-level neural language model is proposed in this paper. The proposed model incorporates a biologically inspired temporal hierarchy in the architecture for representing multiple compositions of language in order to handle longer sequences for the character-level language model. The temporal hierarchy is introduced in the language model by utilizing a Gated Recurrent Neural Network with multiple timescales. The proposed model incorporates a timescale adaptation mechanism for enhancing the performance of the language model. We evaluate our proposed model using the popular Penn Tree-bank and Text8 corpora. The experiments show that the use of multiple timescales in a Neural Language Model (NLM) enables improved performance despite having fewer parameters and with no additional computation requirements. Our experiments also demonstrate the ability of the adaptive temporal hierarchies to represent multiple compositonality without the help of complex hierarchical architectures and shows that better representation of the longer sequences lead to enhanced performance of the probabilistic language model.
机译:一种新型的字符级神经语言模型,本文提出。该模型包含在体系结构,以便处理为字符级语言模型更长的序列代表语言的多个组合物中的生物激励时间层次结构。时间分级结构中的语言模型通过利用封闭式递归神经网络具有多时间尺度的介绍。该模型采用了增强的语言模型的性能的时间尺度的适应机制。我们评估我们采用了流行的宾州树库和语料库Text8提出的模型。实验表明,在神经语言模型(NLM)使用多个时间尺度的能够改善性能,尽管其具有更少的参数,并与没有额外的计算需求。我们的实验也证明了自适应时间层次的代表多个compositonality没有复杂的层次架构和表演的帮助下,较长的序列具有更好的代表性导致概率语言模型的增强性能的能力。

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