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Sentiment analysis on product reviews based onweighted word embeddings and deep neural networks

机译:基于重量单词嵌入和深神经网络的产品评论的情感分析

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摘要

Sentiment analysis is one of the major tasks of natural language processing, in which attitudes, thoughts, opinions, or judgments toward a particular subject has been extracted. Web is an unstructured and rich source of information containing many text documents with opinions and reviews. The recognition of sentiment can be helpful for individual decision makers, business organizations, and governments. In this article, we present a deep learning-based approach to sentiment analysis on product reviews obtained from Twitter. The presented architecture combines TF-IDF weighted Glove word embedding with CNN-LSTM architecture. The CNN-LSTM architecture consists of five layers, that is, weighted embedding layer, convolution layer (where, 1-g, 2-g, and 3-g convolutions have been employed), max-pooling layer, followed by LSTM, and dense layer. In the empirical analysis, the predictive performance of different word embedding schemes (ie, word2vec, fastText, GloVe, LDA2vec, and DOC2vec) with several weighting functions (ie, inverse document frequency, TF-IDF, and smoothed inverse document frequency function) have been evaluated in conjunction with conventional deep neural network architectures. The empirical results indicate that the proposed deep learning architecture outperforms the conventional deep learning methods.
机译:情绪分析是自然语言处理的主要任务之一,其中提取了对特定主题的态度,思想,意见或判断。 Web是一个非结构化和丰富的信息来源,包含许多具有意见和评论的文本文件。对情绪的承认可以有助于个人决策者,商业组织和政府。在本文中,我们提出了一种基于深入的学习方法,对从Twitter获得的产品审查的情绪分析。呈现的架构将TF-IDF加权手套Word嵌入CNN-LSTM架构。 CNN-LSTM架构由五个层组成,即加权嵌入层,卷积层(其中,1-G,2-G和3G卷积已经采用),最大池层,其次是LSTM,以及致密层。在实证分析中,具有多个加权函数(即,逆文档频率,TF-IDF和平滑的逆文档频率函数)的不同词嵌入方案(即Word2Vec,FastText,Glove,LDA2VEC和DOC2VEC)的预测性能与传统的深神经网络架构结合进行评估。经验结果表明,所提出的深度学习架构优于传统的深度学习方法。

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