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Sentimental Short Sentences Classification by Using CNN Deep Learning Model with Fine Tuned Word2Vec

机译:使用CNN深度学习模型使用微调Word2Vec的情感短句分类

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Continues growth of social networking web users, people daily shared their ideas and opinions in the form of texts, images, videos, and speech. Text categorization is still a crucial issue because these huge texts received from the heterogeneous sources and different mindset peoples. The shared opinion is to be incomplete, inconsistent, noisy and also in different languages form. Currently, NLP and deep neural network methods are widely used to solve such issues. In this way, Word2Vec word embedding and Convolutional Neural Network (CNN) method have to be implemented for effective text classification. In this paper, the proposed model perfectly cleaned the data and generates word vectors from pre-trained Word2Vec model and use CNN layer to extract better features for short sentences categorization.
机译:继续增长社交网络用户,人们日常分享他们的思想和意见,文本,图像,视频和演讲。文本分类仍然是一个至关重要的问题,因为这些巨大的文本从异质来源和不同的思维人民收到。共享意见是不完整,不一致,嘈杂,也是不同的语言形式。目前,NLP和深度神经网络方法广泛用于解决这些问题。以这种方式,必须为有效的文本分类实现Word2Vec字嵌入和卷积神经网络(CNN)方法。在本文中,所提出的模型完美清除了数据并从预先训练的Word2VEC模型生成字向量,并使用CNN层提取更好的短句分类功能。

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