基于卷积-递归神经网络模型的语言独立情感分析

Vojtech Myska, Radim Burget, Lukas Povoda, M. Dutta
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引用次数: 1

摘要

文本分类是对文本进行分析并根据其内容为其分配一个或多个类的过程。介绍了一种基于卷积递归神经网络的语言无关文本分类器。分类器工作在字符级别,而不是一些更高的结构,如单词,句子等。为了评估所提出方法的准确性,使用了Yelp数据集和其他多语言数据集,这些数据集来自包含捷克语、德语和西班牙语的电影评论数据库。结果在Yelp数据集上的准确率为93.64%。我们还证明了所提出的模型可以适用于各种语言。
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Linguistically independent sentiment analysis using convolutional-recurrent neural networks model
Text classification is a process which analyses text and assigns one or more classes to it based on its content. This paper introduces a linguistically independent text classifier based on convolutional–recurrent neural networks. The classifier works at character level instead of some higher structures such as words, sentences, etc. To evaluate the accuracy of the proposed methodology, the Yelp data set and other multilingual data set obtained from film review databases containing Czech, German and Spanish languages were used. The resulting accuracy on the Yelp data set is 93,64%. We also proved that the proposed model can work for various languages.
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