Exploring the Effectiveness of Deep Learning in Analyzing Review Sentiment

Mariyanto Totox, H. Pardede
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Abstract

This study aimed to analyze sentiment in office product reviews by using word embedding with three neural network modeling approaches: Convolutional Neural Networks (CNN), Long Short-Term Memory (LSTM), and Gated Recurrent Units (GRU). Office product review data is taken from Amazon's reviews of office products covering a wide range of sentiments. Word embedding converts text into a numerical vector representation for neural network processing. Experimental comparison of this model reveals that CNN achieves the highest accuracy, 77.99%. The CNN model effectively extracts significant features from review text, improving sentiment classification performance. Although the LSTM and GRU models show satisfactory results, they do not match CNN performance. These findings demonstrate the effectiveness of word embedding and neural networks for sentiment analysis in office product reviews. This provides valuable insights for companies to improve their products based on user feedback from online reviews. Additionally, this research serves as a foundation for further advances in sentiment analysis across a wide range of other products and services
探索深度学习在评论情绪分析中的有效性
本研究旨在利用卷积神经网络(CNN)、长短期记忆(LSTM)和门控循环单元(GRU)三种神经网络建模方法,对办公产品评论中的情绪进行词嵌入分析。办公产品评论数据取自亚马逊对办公产品的评论,涵盖了广泛的观点。词嵌入将文本转换为神经网络处理的数字向量表示。该模型的实验对比表明,CNN的准确率最高,达到77.99%。CNN模型有效地从评论文本中提取重要特征,提高了情感分类性能。尽管LSTM和GRU模型显示了令人满意的结果,但它们的性能与CNN不匹配。这些发现证明了词嵌入和神经网络在办公产品评论情感分析中的有效性。这为公司提供了有价值的见解,可以根据用户在线评论的反馈来改进他们的产品。此外,这项研究为进一步推进其他产品和服务的情感分析奠定了基础
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