检查排名对消费者行为和搜索引擎收入的影响

A. Ghose, Panagiotis G. Ipeirotis, Beibei Li
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引用次数: 227

摘要

本文研究了三种不同类型的搜索引擎排名对消费者行为和搜索引擎收入的影响:直接排名效应、排名与产品评级之间的交互效应和个性化排名效应。我们结合了一个层次贝叶斯模型,估计了来自Travelocity的大约100万次在线会话,并使用现实世界的酒店搜索引擎应用程序进行了随机实验。我们的档案数据分析和随机实验在以下方面是一致的:1基于消费者效用的排名机制可以导致整体搜索引擎收入的显著增加。2 .搜索引擎排名与产品评级之间存在显著的相互作用。搜索引擎上较差的位置对“高级”酒店的影响更大。另一方面,顾客评价较低的酒店更有可能因为被放在屏幕顶部而受益。这些发现表明,产品搜索引擎可以从直接将社交媒体的信号纳入其排名算法中获益。我们的随机实验也表明,与用户不能与排名算法交互的“被动”个性化排名系统相比,用户可以与排名算法交互并定制排名算法的“主动”个性化排名系统导致更高的点击量,但更低的购买倾向和更低的搜索引擎收入。这一结果表明,在决策过程中提供更多的信息可能会导致消费者由于信息过载而减少购买。因此,产品搜索引擎不应该默认采用个性化排名系统。总体而言,我们的研究揭示了排名的经济影响及其与社交媒体对产品搜索引擎的互动。这篇论文被信息系统的Lorin Hitt接受。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Examining the Impact of Ranking on Consumer Behavior and Search Engine Revenue
In this paper, we study the effects of three different kinds of search engine rankings on consumer behavior and search engine revenues: direct ranking effect, interaction effect between ranking and product ratings, and personalized ranking effect. We combine a hierarchical Bayesian model estimated on approximately one million online sessions from Travelocity, together with randomized experiments using a real-world hotel search engine application. Our archival data analysis and randomized experiments are consistent in demonstrating the following: 1 A consumer-utility-based ranking mechanism can lead to a significant increase in overall search engine revenue. 2 Significant interplay occurs between search engine ranking and product ratings. An inferior position on the search engine affects “higher-class” hotels more adversely. On the other hand, hotels with a lower customer rating are more likely to benefit from being placed on the top of the screen. These findings illustrate that product search engines could benefit from directly incorporating signals from social media into their ranking algorithms. 3 Our randomized experiments also reveal that an “active” personalized ranking system wherein users can interact with and customize the ranking algorithm leads to higher clicks but lower purchase propensities and lower search engine revenue compared with a “passive” personalized ranking system wherein users cannot interact with the ranking algorithm. This result suggests that providing more information during the decision-making process may lead to fewer consumer purchases because of information overload. Therefore, product search engines should not adopt personalized ranking systems by default. Overall, our study unravels the economic impact of ranking and its interaction with social media on product search engines. This paper was accepted by Lorin Hitt, information systems.
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