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Feature Extraction and Analysis of Natural Language Processing for Deep Learning English Language

机译:深度学习英语语言自然语言处理的特征提取与分析

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NLP (Natural Language Processing) is a technology that enables computers to understand human languages. Deep-level grammatical and semantic analysis usually uses words as the basic unit, and word segmentation is usually the primary task of NLP. In order to solve the practical problem of huge structural differences between different data modalities in a multi-modal environment and traditional machine learning methods cannot be directly applied, this paper introduces the feature extraction method of deep learning and applies the ideas of deep learning to multi-modal feature extraction. This paper proposes a multi-modal neural network. For each mode, there is a multilayer sub-neural network with an independent structure corresponding to it. It is used to convert the features in different modes to the same-modal features. In terms of word segmentation processing, in view of the problems that existing word segmentation methods can hardly guarantee long-term dependency of text semantics and long training prediction time, a hybrid network English word segmentation processing method is proposed. This method applies BI-GRU (Bidirectional Gated Recurrent Unit) to English word segmentation, and uses the CRF (Conditional Random Field) model to annotate sentences in sequence, effectively solving the long-distance dependency of text semantics, shortening network training and predicted time. Experiments show that the processing effect of this method on word segmentation is similar to that of BI-LSTM-CRF (Bidirectional- Long Short Term Memory-Conditional Random Field) model, but the average predicted processing speed is 1.94 times that of BI-LSTM-CRF, effectively improving the efficiency of word segmentation processing.
机译:NLP(自然语言处理)是一种使计算机能够理解人类的技术。深度级别的语法和语义分析通常使用单词作为基本单元,并且单词分割通常是NLP的主要任务。为了解决多模态环境中不同数据模式之间的巨大结构差异的实际问题,传统机器学习方法不能直接应用,介绍了深度学习的特征提取方法,将深度学习的思想应用于多重 - 透过特征提取。本文提出了一种多模态神经网络。对于每种模式,存在具有与其对应的独立结构的多层子神经网络。它用于将不同模式的特征转换为同样模态特征。就字词分割处理而言,鉴于现有字分割方法可能几乎不能保证文本语义和长期训练预测时间的长期依赖性的问题,提出了一种混合网络英语字分割处理方法。该方法将Bi-Gru(双向门控复发单元)应用于英语字分割,并使用CRF(条件随机字段)模型以序列的诠释句子,有效解决文本语义的长距离依赖性,缩短网络培训和预测时间。实验表明,这种方法对字分割的处理效果类似于Bi-LSTM-CRF(双向短期内存条件随机场)模型的处理效果,但平均预测处理速度为Bi-LSTM的1.94倍-CRF,有效提高词分割处理的效率。

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