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A Lexicon-Based Sentiment Analysis for Amazon Web Review

机译:基于词典的亚马逊网络评论情绪分析

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摘要

The development of internet more quickly over time as well as the development of e-commerce one of them is amazon.com. The amazon.com is one of the largest e-commerce in the world by providing various needs that can be accessed by internet. Review feature provided to make amazon.com party can know the various responses from consumers. However amazon.com difficulties in summarizing the various kinds of reviews that are positive or negative. By using one natural language processing the main purpose is to help the amazon.com in knowing the most responses from consumers to improve the quality service. In this research we will be using the dataset that was obtained from UCI Machine Learning that contain 1000 set of data which has 478 of negative data and 522 positive data and this will be combine a variety of classification methods for comparison and in preprocessing process will be added with lexicon technique to improve the quality of preprocessing. The result of this research is K-Nearest Neighbor with lexicon technique get highest accuracy with value 92.67% followed by SVM with lexicon get 91.33% accuracy and last Decision tree with 82% accuracy.
机译:随着时间的推移,互联网的发展以及它们之一的电子商务的发展是Amazon.com。 Amazon.com是通过提供可通过互联网访问的各种需求来世界上最大的电子商务之一。查看要使Amazon.com派对可以了解消费者的各种反应。然而,Amazon.com总结了积极或负面的各种评论困难。通过使用一种自然语言处理,主要目的是帮助Amazon.com了解消费者的最大响应,以提高质量服务。在本研究中,我们将使用从UCI机器学习中获得的数据集,该数据集包含1000组数据,其中有478个负数据和522个正数据,这将结合各种分类方法进行比较,并且在预处理过程中将是添加了Lexicon技术,提高了预处理的质量。该研究的结果是K-Collect邻居,具有Lexicon技术的最高精度,其值为92.67%,然后具有Lexicon的SVM获得91.33%的准确度和最后决策树,精度为82%。

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