A Comparative Study of Neural Network for Text Classification

X. Peng
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引用次数: 1

Abstract

This With the popularity of artificial intelligence in recent years, Natural Language Processing (NLP) technology has also become the focus of research. NLP technology's unique machine translation and text sentiment analysis functions can prevent people from experiencing poor language communication when travelling abroad and help artificial intelligence understand people's language better. This article has made corresponding practice and analysis for the critical requirement of “text classification” in NLP. In the experiment, we used the Internet Movie Database (IMDB) film review forum as the dataset. Recurrent Neural Network (RNN) and the corresponding variants of RNN (Long Short Term Memory (LSTM)) are analyzed and compared from the theoretical aspect. Moreover, we introduced a bidirectional mechanism to optimize RNN and reduce the influence of parameter changes on model training by comparing specific neural network structures. We found the benefits of LSTM in text classification applications compared with RNN and simple neural networks by comparing experiments. Besides, we explored the role of the bidirectional mechanism for RNN. Finally, we create a two-way LSTM model for text classification model and obtain the model training results indicating less overfitting and less loss than other structures.
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神经网络文本分类的比较研究
随着近年来人工智能的普及,自然语言处理(NLP)技术也成为研究的重点。NLP技术独特的机器翻译和文本情感分析功能,可以防止人们在国外旅行时出现语言交流不畅的情况,帮助人工智能更好地理解人们的语言。本文针对自然语言处理中“文本分类”的关键要求做了相应的实践和分析。在实验中,我们使用互联网电影数据库(IMDB)电影评论论坛作为数据集。从理论方面对递归神经网络(RNN)与相应的递归神经网络(LSTM)进行了分析和比较。此外,我们引入了一种双向机制来优化RNN,并通过比较特定的神经网络结构来减少参数变化对模型训练的影响。通过实验对比,我们发现LSTM在文本分类应用中优于RNN和简单神经网络。此外,我们还探讨了RNN双向机制的作用。最后,我们为文本分类模型创建了一个双向LSTM模型,得到了比其他结构更少的过拟合和损失的模型训练结果。
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