一个手套CNN-Bilstm情感分类

Peter Atandoh, Z. Feng, D. Adu-Gyamfi, H. Leka, Paul H. Atandoh
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引用次数: 1

摘要

网上评论产品已经成为消费者表达他们对产品或服务的意见和感受的一种越来越流行的方式。分析这些在线评论的大数据将有助于辨别和提取有用的事实和信息,这些事实和信息可以为感兴趣的商家和其他组织提供竞争和经济优势。文本分类根据各种预定义的类别组织文档。为了解决上述问题,我们使用手套嵌入来进行评论情感分析。我们进一步将该嵌入层集成到深度卷积神经网络(CNN)-双向LSTM模型中。我们在IMDB和电影评论数据集上进一步训练我们的模型,以提取极性为正或负,随后将我们的模型与其他最先进的模型进行比较。上述实验验证了该方法的有效性和优越性。
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A Glove CNN-Bilstm Sentiment Classification
Reviewing products online has become an increasingly popular way for consumers to voice their opinions and feelings about a product or service. Analyzing this Big data of online reviews would help to discern and extract useful facts and information that could provide a competitive and economic advantage to merchants and other organizations that are interested. Text classification organizes documents according to a variety of predefined categories. In other to solve the aforementioned problems, we employed Glove embeddings for our review sentiment analysis. We further integrate this embedding layer into a deep convolutional neural network (CNN)-bidirectional LSTM model. We further train our model on the IMDB and movie review dataset to extract the polarity as positive or negative and subsequently compare our model with other state-of- the-art models. The aforementioned experiments validate the efficacy and superiority of our proposed approach.
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