People often take user ratings and reviews into consideration when shopping for products or services online. However, such user-generated data contains self-selection bias that could affect people decisions and it is hard to resolve this issue completely by algorithms. In this work, we propose to raise the awareness of the self-selection bias by making three types of information concerning user ratings and reviews transparent. We distill these three pieces of information (reviewers experience, the extremity of emotion, and reported aspects) from the definition of self-selection bias and exploration of related literature. We further conduct an online survey to assess the perceptions of the usefulness of such information and identify the exact facets people care about in their decision process. Then, we propose a visual design to make such details behind user reviews transparent and integrate the design into an experimental website for evaluation. The results of a between-subjects study demonstrate that our bias-aware design significantly increases the awareness of bias and their satisfaction with decision-making. We further offer a series of design implications for improving information transparency and awareness of bias in user-generated content.
翻译:在网上采购产品或服务时,人们往往会考虑到用户的评级和审查,然而,这种用户生成的数据含有自我选择的偏差,可能影响人们的决定,很难用算法彻底解决这一问题。在这项工作中,我们提议通过制作三种关于用户评级的信息和透明性审查来提高对自我选择偏差的认识。我们从自我选择偏差的定义和对相关文献的探索中提取这三种信息(评论者的经验、情绪的极端性以及所报告的方面),我们进一步进行在线调查,以评估对此类信息有用性的看法,并查明人们在决策过程中关心的确切方面。然后,我们提出一种视觉设计,使用户审查背后的这类细节透明化,并将设计纳入一个试验性的评价网站。两个主题之间的研究结果表明,我们的偏差设计极大地提高了对偏差及其对决策满意度的认识。我们还提出一系列设计影响,以提高用户生成内容的信息透明度和偏见的认识。