A Sentiment Analysis of Amazon Review Data Using Machine Learning Model

R. Rajat, Priyanka Jaroli, Naveen Kumar, R. Kaushal
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引用次数: 2

Abstract

Nowadays everything is digitalized in the world. In the digitalization world E-commerce take a unique place for people. People are not going anywhere and buy all the thing at home using this E-commerce platform. For selecting the platform generally used the reviews of the people which are already buy from there. The paper proposes a sentiment analysis of the large amazon real dataset based on the counter vectorizer (CV) and term frequency inverse document frequency (TF-IDF) and logistic regressor. Firstly, take the dataset from the amazon E-commerce into JSON format and load the dataset and split the dataset into train test model. Secondly, take out the features using the counter vectorizer and term frequency inverse document frequency (TF-IDF). Finally, logistic regressor (LR) is used and measure the positive and negative sentiment of the review. simulation result represents the model accuracy score, precision, recall, confusion matrix of the implemented approach.
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基于机器学习模型的亚马逊评论数据情感分析
如今,世界上的一切都数字化了。在数字化的世界里,电子商务对人们来说占有独特的地位。人们不用去任何地方,用这个电子商务平台在家里买所有的东西。为了选择平台,通常使用已经在那里购买的人的评论。本文提出了一种基于反向量器(CV)、词频逆文档频率(TF-IDF)和逻辑回归的大型亚马逊真实数据集情感分析方法。首先,将亚马逊电子商务数据集转换为JSON格式,加载数据集,并将数据集拆分为训练测试模型。其次,利用反矢量器和词频逆文档频率(TF-IDF)提取特征;最后,使用逻辑回归(LR)来衡量评论的积极和消极情绪。仿真结果表示了所实现方法的模型准确率得分、精密度、召回率、混淆矩阵。
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