葡萄酒评论描述符作为质量预测因子:来自语言处理技术的证据

IF 1.6 4区 经济学 Q2 AGRICULTURAL ECONOMICS & POLICY
Chenyu Yang, Jackson Barth, Duwani Katumullage, Jing Cao
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引用次数: 6

摘要

摘要关于葡萄酒评论是否提供了关于葡萄酒特性和质量的有意义的信息,目前仍存在争议。然而,很少有研究直接针对葡萄酒评论和数字测量在葡萄酒数据分析中的效用进行比较。基于《葡萄酒观察家》对近300000种葡萄酒的评论数据,我们使用逻辑回归模型来调查葡萄酒评论是否有助于预测葡萄酒的质量分类。我们将样品分为两个二元质量等级中的一个,即临界等级为90或以上的葡萄酒,另一组为89或以下的葡萄酒。这个二元结果构成了我们的因变量。解释变量包括数字协变量的不同组合,如葡萄酒的价格和年份以及文本评论的数字表示。通过比较模型的解释准确性,我们的结果表明,葡萄酒评论描述符在预测二元葡萄酒质量分类时比各种数值协变量(包括葡萄酒价格)更准确。在这项研究中,我们在文本分析中包括了三种不同的特征提取方法:潜在狄利克雷分配、术语频率逆文档频率和Doc2Vec文本嵌入。我们发现,Doc2Vec是性能最好的特征提取方法,由于其能够使用文本文档中的上下文信息,因此能够产生最高的分类精度。(JEL分类:C45、C88、D83)
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Wine Review Descriptors as Quality Predictors: Evidence from Language Processing Techniques
Abstract There is an ongoing debate on whether wine reviews provide meaningful information on wine properties and quality. However, few studies have been conducted aiming directly at comparing the utility of wine reviews and numeric measurements in wine data analysis. Based on data from close to 300,000 wines reviewed by Wine Spectator, we use logistic regression models to investigate whether wine reviews are useful in predicting a wine's quality classification. We group our sample into one of two binary quality brackets, wines with a critical rating of 90 or above and the other group with ratings of 89 or below. This binary outcome constitutes our dependent variable. The explanatory variables include different combinations of numerical covariates such as the price and age of wines and numerical representations of text reviews. By comparing the explanatory accuracy of the models, our results suggest that wine review descriptors are more accurate in predicting binary wine quality classifications than are various numerical covariates—including the wine's price. In the study, we include three different feature extraction methods in text analysis: latent Dirichlet allocation, term frequency-inverse document frequency, and Doc2Vec text embedding. We find that Doc2Vec is the best performing feature extraction method that produces the highest classification accuracy due to its capability of using contextual information from text documents. (JEL Classifications: C45, C88, D83)
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来源期刊
Journal of Wine Economics
Journal of Wine Economics Agricultural and Biological Sciences-Food Science
CiteScore
3.20
自引率
28.60%
发文量
33
期刊介绍: The Journal of Wine Economics (JWE), launched in 2006, provides a focused outlet for high-quality, peer-reviewed research on economic topics related to wine. Although wine economics papers have been, and will continue to be, published in leading general and agricultural economics journals, the number of high-quality papers has grown to such an extent that a specialized journal can provide a useful platform for the exchange of ideas and results. The JWE is open to any area related to the economic aspects of wine, viticulture, and oenology. It covers a wide array of topics, including, but not limited to: production, winery activities, marketing, consumption, as well as macroeconomic and legal topics. The JWE has been published twice a year and contains main papers, short papers, notes and comments, reviews of books, films and wine events, as well as conference announcements. From 2013 on, the JWE has been published three times per year. The Journal of Wine Economics is fully owned by the American Association of Wine Economists (AAWE) and, since 2012, has been published by Cambridge University Press.
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