基于LSTM方法的美容产品评论情感分析

Muhammad Rafii Danendra, Y. Sibaroni
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引用次数: 0

摘要

评审是包含被评审的工作或事件的价值的意见。许多网站为用户提供现代产品或商品的评论,例如femaledaily.com网站,它为用户提供了一个评论购买产品的平台。这些评论中包含的观点对企业主来说是有价值的信息。由于产品评论,企业主可以获得与他们销售的产品相关的见解和数据,从而提高产品质量。然而,从非结构化的评论文本中获取意见信息是相当困难的。本研究旨在将这些评论分类为“正面”或“负面”。提出的分类模型是LSTM。长短期记忆(LSTM)在之前训练的模型中被用来分类这篇评论。为该模型设计的模型侧重于以下预处理审查:数据清理、案例折叠、规范化、标记化、停止词和词干。一旦分类,这个评论将被可视化为一个图表。在对价格方面的看法上,最好的情况的结果准确率为95,10%。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Sentiment Analysis on Beauty Product Reviews using LSTM Method
A review is an opinion that contains value on the job or event being reviewed. Many sites provide reviews of products or goods in the modern era to users, such as the femaledaily.com site, which provides a platform for users to review products purchased. The sentiments contained in these reviews are valuable information for business owners. Thanks to product reviews, business owners get insights and data related to the products they sell to improve their products' quality. However, getting opinion information from an unstructured review text is quite difficult. This study aims to classify these reviews as "positive" or "negative". The model proposed for classification is LSTM. Long Short-Term Memory (LSTM) was used in the previously trained model to classify this review. The model designed for the model focuses on preprocessing reviews as follows: data cleansing, case folding, normalization, tokenization, stopword, and stemming. Once classified, this review is visualized as a graph. The best-case scenario results with an accuracy of 95,10% on the sentiment towards the price aspect.
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