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A survey on the application of recurrent neural networks to statistical language modeling

机译:递归神经网络在统计语言建模中的应用研究

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In this paper, we present a survey on the application of recurrent neural networks to the task of statistical language modeling. Although it has been shown that these models obtain good performance on this task, often superior to other state-of-the-art techniques, they suffer from some important drawbacks, including a very long training time and limitations on the number of context words that can be taken into account in practice. Recent extensions to recurrent neural network models have been developed in an attempt to address these drawbacks. This paper gives an overview of the most important extensions. Each technique is described and its performance on statistical language modeling, as described in the existing literature, is discussed. Our structured overview makes it possible to detect the most promising techniques in the field of recurrent neural networks, applied to language modeling, but it also highlights the techniques for which further research is required.
机译:在本文中,我们对递归神经网络在统计语言建模任务中的应用进行了调查。尽管已经证明这些模型在此任务上获得了良好的性能,通常优于其他最新技术,但它们仍具有一些重要的缺点,包括非常长的训练时间以及上下文词数量的限制。在实践中可以考虑。为了解决这些缺点,已经开发了对递归神经网络模型的最新扩展。本文概述了最重要的扩展。如现有文献所述,描述了每种技术,并讨论了其在统计语言建模上的性能。我们的结构化概述使我们有可能检测出应用于语言建模的递归神经网络领域中最有前途的技术,但同时也强调了需要进一步研究的技术。

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