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Word embedding and text classification based on deep learning methods

机译:基于深度学习方法的单词嵌入和文本分类

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Traditional manual text classification method has been unable to cope with the current huge amount of data volume. The improvement of deep learning technology also accelerates the technology of text classification. Based on this background, we presented different word embedding methods such as word2vec, doc2vec, tfidf and embedding layer. After word embedding, we demonstrated 8 deep learning models to classify the news text automatically and compare the accuracy of all the models, the model ‘2 layer GRU model with pretrained word2vec embeddings’ model got the highest accuracy. Automatic text classification can help people summary the text accurately and quickly from the mass of text information. No matter in the academic or in the industry area, it is a topic worth discussing.
机译:传统的手动文本分类方法无法应对当前的大量数据量。 深度学习技术的改善还加速了文本分类技术。 基于此背景,我们呈现了不同的单词嵌入方法,例如Word2Vec,Doc2Vec,TFIDF和嵌入层。 在嵌入单词后,我们展示了8个深入学习模型,自动对新闻文本进行分类并比较所有模型的准确性,模型'2层GRU模型与普雷雷普雷普雷克嵌入式嵌入式模型的精度最高。 自动文本分类可以帮助人们准确,快速地从文本信息的质量汇总文本。 无论在学术还是在工业领域,都是一个值得讨论的话题。

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