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Learning FOFE based FNN-LMs with noise contrastive estimation and part-of-speech features

机译:学习基于FOFE的FNN-LM,具有噪声对比估计和词性特征

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A simple but powerful language model called fixed-size ordinally-forgetting encoding (FOFE) based feedforward neural network language models (FNN-LMs) has been proposed recently. Experimental results have shown that FOFE based FNN-LMs can outperform not only the standard FNN-LMs but also the popular recurrent neural network language models (RNN-LMs). In this paper, we extend FOFE based FNN-LMs from several aspects. Firstly, we have proposed a new method to further improve the performance of FOFE based FNN-LMs by adding transitions of part-of-speech (POS) tags as additional features. Secondly, we have investigated how to speedup the learning of FOFE based FNN-LMs by using noise contrastive estimation (NCE). As a result, we can dramatically speedup the learning of FOFE based FNN-LMs while we still achieve very competitive experimental results on Large Text Compression Benchmark (LTCB).
机译:最近已经提出了一种简单但功能强大的语言模型,称为基于固定大小的通常忘记编码(FOFE)的前馈神经网络语言模型(FNN-LM)。实验结果表明,基于FOFE的FNN-LM不仅能胜过标准FNN-LM,而且还能胜过流行的递归神经网络语言模型(RNN-LM)。在本文中,我们从多个方面扩展了基于FOFE的FNN-LM。首先,我们提出了一种新方法,通过添加词性(POS)标签的过渡作为附加功能来进一步提高基于FOFE的FNN-LM的性能。其次,我们研究了如何通过使用噪声对比估计(NCE)来加快基于FOFE的FNN-LM的学习。结果,我们可以大大加快基于FOFE的FNN-LM的学习,同时我们仍然在大文本压缩基准(LTCB)上获得非常有竞争力的实验结果。

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