在线客户评论的价值

Georgios Askalidis, E. Malthouse
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引用次数: 52

摘要

我们研究了消费者评论量对用户浏览产品页面的购买可能性(转化率)的影响。我们建议使用指数学习曲线模型来研究转化率如何随着评论数量的变化而变化。我们把没有评论和无限数量评论之间的转化率差异称为评论价值。我们发现,平均而言,在选择展示产品的用户中,随着评论的积累,产品的转化率可以提高270%。我们还发现,随着产品评论的积累,边际价值会逐渐减少,前五个评论推动了前面提到的大部分增长。为了解决评论和转化率同时增加的问题,我们使用客户会话,其中评论不被显示为趋势的控制,而这种趋势无论评论量的增加都会发生。使用我们的框架,我们进一步发现高价商品比低价商品具有更高的评论价值。高价商品的转化率会随着评论的积累而提高380%,而低价商品的转化率只有190%。我们推断评论的存在为顾客提供了有价值的信号,增加了他们的购买倾向。我们还推断,用户通常不会关注整个评论集,特别是如果有很多评论,而是会关注前几个可用的评论。我们的方法可以扩展并应用于各种环境中,以获得进一步的见解。
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The Value of Online Customer Reviews
We study the effect of the volume of consumer reviews on the purchase likelihood (conversion rate) of users browsing a product page. We propose using the exponential learning curve model to study how conversion rates change with the number of reviews. We call the difference in conversion rate between having no reviews and an infinite number the value of reviews. We find that, on average, the conversion rate of a product can increase by as much as 270% as it accumulates reviews, amongst the users that choose to display them. We also find diminishing marginal value as a product accumulates reviews, with the first five reviews driving the bulk of the aforementioned increase. To address the problem of simultaneity of increase of reviews and conversion rate, we use customer sessions in which reviews were not displayed as a control for trends that would have happened regardless of the increase in the review volume. Using our framework, we further find that high priced items have a higher value for reviews than lower priced items. High priced items can see their conversion rate increase by as much as 380% as they accumulate reviews compared to 190% for low priced items.We infer that the existence of reviews provides valuable signals to the customers, increasing their propensity to purchase. We also infer that users usually don't pay attention to the entire set of reviews, especially if there are a lot of them, but instead they focus on the first few available. Our approach can be extended and applied in a variety of settings to gain further insights.
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