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Potential Trend for Online Shopping Data Based on the Linear Regression and Sentiment Analysis

机译:基于线性回归与情感分析的网上购物数据潜在趋势

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How to reduce the cost of competition in the industry, identify effective customers, and understand the emotional needs and consumer preferences of customers, so as to carry out fast and accurate commercial marketing, is an important research topic. In this paper, we discussed the method for the analysis of three product data which represent the customer-supplied ratings and reviews for microwave ovens, baby pacifiers, and hair dryers sold in the Amazon marketplace over the time period. The sentiment analysis, linear regression analysis, and descriptive statistics were implemented to analyze the three datasets. Based on the sentiment analysis given by the naive Bayesian classification algorithm, we found that the star rating is positively correlated with the reviews, while the helpfulness ratings have no specific relationship with the star rating and reviews. We use multiple regression analysis and clustering algorithm analysis to get the relationship between the 4 indexes such as time, star rating, reviews, and helpfulness rating. We find that there is a positive correlation between the 4 indexes, and the reputation of the product online market is improving as time grows. Based on the analysis of the positive reviews and star ratings, we suggested indicating a potentially successful or failing product by the positive reviews. We also discussed the relations between the star ratings and number of reviews. Finally, we selected the words from the Amazon sentiment dictionary as candidate words. By counting the candidate words’ appearance in the review, the keywords that can reflect the star rating were found.
机译:如何降低业内竞争成本,确定有效客户,并了解客户的情感需求和消费者偏好,以便进行快速准确的商业营销,是一个重要的研究主题。在本文中,我们讨论了分析三种产品数据的方法,该数据代表了在亚马逊市场上销售的微波炉,婴儿抚养炉和吹风机的客户提供的评分和评论。实施了情绪分析,线性回归分析和描述性统计,分析了三个数据集。基于天真贝叶斯分类算法给出的情感分析,我们发现星级评级与审查有肯定的相关性,而助人的评级与明星评级和评论没有具体关系。我们使用多元回归分析和聚类算法分析来获得4个索引之间的关系,例如时间,星级评级,评论和助人评分。我们发现,随着时间的推移,4索引力与产品在线市场的声誉正在提高。根据积极评价和明星评级的分析,我们建议通过积极评价表明潜在成功或失败的产品。我们还讨论了星际评级和评论数量之间的关系。最后,我们选择了亚马逊情绪字典的单词作为候选词。通过计算候选词在审查中的外观,找到了可以反映星级评级的关键字。

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