论文标题
使用客户评论并审查投票的功能级评级系统
Feature-level Rating System using Customer Reviews and Review Votes
论文作者
论文摘要
这项工作研究了我们如何从客户评论中获得移动产品的功能级别评级,并审查投票以影响新客户和制造商的决策。这样的评级系统比产品级评级系统提供的产品提供了更全面的产品。虽然产品级别的评分太通用,但特定功能级别的评分是特定的。我们完全知道产品的好坏。一直有必要知道哪些功能不足或根据客户的看法表现良好。它使制造商和客户在决定改善产品和购买方面的决策中都保持了良好的信息。不同的客户对不同功能感兴趣。因此,功能级别的评级可以使购买决策个性化。我们分析了在在线购物网站(亚马逊)上收集的有关各种移动产品和评论票的客户评论。明确地,我们为此目的进行了以功能为中心的情感分析。最终,我们的分析将在网上销售的4K+手机的108个功能产生评级。它有助于制定如何改善产品(从制造商的角度)以及制定个性化的购买决策(从买方的角度)成为可能性。我们的分析在推荐系统,消费者研究等中都有应用。
This work studies how we can obtain feature-level ratings of the mobile products from the customer reviews and review votes to influence decision making, both for new customers and manufacturers. Such a rating system gives a more comprehensive picture of the product than what a product-level rating system offers. While product-level ratings are too generic, feature-level ratings are particular; we exactly know what is good or bad about the product. There has always been a need to know which features fall short or are doing well according to the customer's perception. It keeps both the manufacturer and the customer well-informed in the decisions to make in improving the product and buying, respectively. Different customers are interested in different features. Thus, feature-level ratings can make buying decisions personalized. We analyze the customer reviews collected on an online shopping site (Amazon) about various mobile products and the review votes. Explicitly, we carry out a feature-focused sentiment analysis for this purpose. Eventually, our analysis yields ratings to 108 features for 4k+ mobiles sold online. It helps in decision making on how to improve the product (from the manufacturer's perspective) and in making the personalized buying decisions (from the buyer's perspective) a possibility. Our analysis has applications in recommender systems, consumer research, etc.