Helping Voice Shoppers Make Purchase Decisions

Gustavo Penha, Eyal Krikon, Vanessa Murdock, Sandeep Avula
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引用次数: 1

Abstract

Online shoppers have a lot of information at their disposal when making a purchase decision. They can look at images of the product, read reviews, make comparisons with other products, do research online, read expert reviews, and more. Voice shopping (purchasing items via a Voice assistant such as Amazon Alexa or Google Assistant) is different. Voice introduces novel challenges as the communication channel is limited in terms of the amount of information people can and are willing to absorb. Because of this, the system should choose the single most effective nugget of information to help the customer, and present the information succinctly. In this paper we report on a within-subject user study (N = 24), in which we employed three template-based methods that use information from customer reviews, product attributes and search relevance signals to generate helpful supporting information. Our results suggest that: (1) supporting information from customer reviews significantly improves participants perception of system effectiveness (helping them make good decisions); (2) supporting information based on search relevance signals improves user perception of system transparency (providing insight into how the system works). We discuss the implications of our findings for providing supporting information for customers shopping by Voice.
帮助语音购物者做出购买决定
网上购物者在做出购买决定时有很多信息可供他们选择。他们可以查看产品的图片,阅读评论,与其他产品进行比较,进行在线研究,阅读专家评论等等。语音购物(通过亚马逊Alexa或谷歌助手等语音助手购买商品)是不同的。语音带来了新的挑战,因为人们能够和愿意吸收的信息量是有限的。因此,系统应该选择最有效的信息块来帮助客户,并简洁地呈现信息。在本文中,我们报告了一项主题内用户研究(N = 24),其中我们采用了三种基于模板的方法,这些方法使用来自客户评论、产品属性和搜索相关信号的信息来生成有用的支持信息。我们的研究结果表明:(1)来自客户评论的支持信息显著提高了参与者对系统有效性的感知(帮助他们做出正确的决策);(2)基于搜索相关信号的支持信息提高了用户对系统透明度的感知(提供了对系统如何工作的洞察)。我们讨论了我们的研究结果对通过语音购物的客户提供支持信息的影响。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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