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Comparison of Deep Learning Approaches for Sentiment Classification

机译:情绪分类深度学习方法的比较

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Word embeddings are used to convert the unstructured text to numerical values for further analysis. Nowadays, prediction based embedding models like Continuous Bag Of Words (CBOW) and Skip grams are used in comparison to frequency based embeddings. Unlike frequency based embeddings, prediction based embeddings are able to model the semantics of the terms present in a sentence. Sentiment Analysis (SA) is a field of study that aims to automatically extract opinions from the data and to further classify them as positive and negative. The application of sentiment analysis in almost all the domains stands as a motivating factor for this work. It suffers from the problem of non-availability of sufficient labeled data to train the model. Due to the scalability and ability of deep learning models to perform automatic feature extraction from the data, they can be introduced to address this problem. They are also used for various applications due to its capability to extract hierarchical structures from complex data. Keras is a Deep Learning (DL) framework that provides an embedding layer to produce the vector representation of words present in the document. The objective of this work is to analyze the performance of three deep learning models namely Convolutional Neural Network (CNN), Simple Recurrent Neural Network (RNN) and Long Short Term Memory (LSTM) for classifying the book reviews. From the experiments conducted, it is found that LS TM model performs better than CNN and simple RNN for sentiment classification.
机译:Word Embeddings用于将非结构化文本转换为数字值以进行进一步分析。如今,与基于连续的单词(Cow)和跳过克的基于预测的嵌入模型与基于频率的嵌入式使用。与基于频率的嵌入式不同,基于预测的嵌入式能够模拟句子中存在的术语的语义。情绪分析(SA)是一个研究领域,旨在自动提取数据的意见,并进一步将它们分类为正负。在几乎所有域中的情感分析在几乎所有域名的应用都是这项工作的激励因素。它存在足够的标记数据来训练模型的问题。由于深度学习模型从数据执行自动特征提取的可扩展性和能力,可以引入它们以解决此问题。它们也用于各种应用,由于其从复杂数据中提取分层结构的能力。 Keras是一个深入的学习(DL)框架,提供嵌入层以产生文档中存在的单词的矢量表示。这项工作的目的是分析三个深度学习模型的性能即卷积神经网络(CNN),简单的经常性神经网络(RNN)和长期内存(LSTM),用于分类书评。从进行的实验中,发现LS TM模型比CNN和简单的RNN更好地表现出情绪分类。

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