在人群中寻找智者和智慧:估计评审员和评审项目的基本素质

Nicolas Carayol, Matthew O Jackson
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摘要

消费者、企业和组织在做出选择时会依赖他人对商品的评价。然而,每个评论者的准确性都不尽相同,有些评论者还存在偏见--相对于他人的品味,他们对物品的评价有系统地过高或过低,甚至故意扭曲评价。我们介绍了如何处理一组评论者对一组项目的评分,并评估各个评论者的准确性和偏差,从而对项目的真实质量做出无偏见且一致的估计。我们提供了蒙特卡罗模拟,展示了我们的技术即使在数据集较小的情况下也能带来的附加值,我们还展示了这种改进会随着项目数量的增加而增加。重温 1976 年比较加利福尼亚葡萄酒和波尔多葡萄酒的著名品酒会,考虑到评论者偏差和准确性的巨大差异,得出的排名与最初的平均评级不同。我们还将这一方法应用于四万五千多份专家评论家对 "期酒 "波尔多优质葡萄酒的评分,以此说明这一方法的威力。这些数据表明,在控制著名专家的评分和众多固定效应的情况下,我们估计的葡萄酒品质能显著预测价格。我们还发现,葡萄酒价格在专家评分中的弹性随着专家评分的准确性而增加。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Finding the Wise and the Wisdom in a Crowd: Estimating Underlying Qualities of Reviewers and Items
Consumers, businesses, and organizations rely on others’ ratings of items when making choices. However, individual reviewers vary in their accuracy and some are biased – either systematically over- or under-rating items relative to others’ tastes, or even deliberately distorting a rating. We describe how to process ratings by a group of reviewers over a set of items and evaluate the individual reviewers’ accuracies and biases, in a way that yields unbiased and consistent estimates of the items’ true qualities. We provide Monte Carlo simulations that showcase the added value of our technique even with small data sets, and we show that this improvement increases as the number of items increases. Revisiting the famous 1976 wine tasting that compared Californian and Bordeaux wines, accounting for the substantial variation in reviewers’ biases and accuracies results in a ranking that differs from the original average rating. We also illustrate the power of this methodology with an application to more than forty-five thousand ratings of “en primeur” Bordeaux fine wines by expert critics. Those data show that our estimated wine qualities significantly predict prices when controlling for prominent experts’ ratings and numerous fixed effects. We also find that the elasticity of a wine price in an expert’s ratings increases with that expert’s accuracy.
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