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Comparative Study of Deep Learning-Based Sentiment Classification

机译:基于深度学习的情感分类的比较研究

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摘要

The purpose of sentiment classification is to determine whether a particular document has a positive or negative nuance. Sentiment classification is extensively used in many business domains to improve products or services by understanding the opinions of customers regarding these products. Deep learning achieves state-of-the-art results in various challenging domains. With the success of deep learning, many studies have proposed deep-learning-based sentiment classification models and achieved better performances compared with conventional machine learning models. However, one practical issue occurring in deep-learning-based sentiment classification is that the best model structure depends on the characteristics of the dataset on which the deep learning model is trained; moreover, it is manually determined based on the domain knowledge of an expert or selected from a grid search of possible candidates. Herein, we present a comparative study of different deep-learning-based sentiment classification model structures to derive meaningful implications for building sentiment classification models. Specifically, eight deep-learning models, three based on convolutional neural networks and five based on recurrent neural networks, with two types of input structures, i.e., word level and character level, are compared for 13 review datasets, and the classification performances are discussed under different perspectives.
机译:情绪分类的目的是确定特定文件是否具有正面或负差。广泛的情绪分类广泛用于许多商业领域,通过了解客户对这些产品的意见来改善产品或服务。深度学习在各种具有挑战性的域名实现最先进的。随着深度学习的成功,许多研究都提出了基于深度学习的情绪分类模型,与传统机器学习模型相比,实现了更好的表演。然而,基于深度学习的情绪分类发生的一个实际问题是最好的模型结构取决于DEAP学习模型培训的数据集的特性;此外,它基于专家的域知识手动确定,或者从可能的候选人的网格搜索中选择。在此,我们提出了不同深度学习的情绪分类模型结构的比较研究,以导出建筑情绪分类模型的有意义影响。具体而言,八种基于卷积神经网络的八种深度学习模型,以及基于经常性神经网络的五个,有两种类型的输入结构,即字级和字符级别,讨论了分类性能在不同的角度下。

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