Learning to Trust: Understanding Editorial Authority and Trust in Recommender Systems for Education

Taha Hassan, Bob Edmison, Timothy L. Stelter, D. McCrickard
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引用次数: 2

Abstract

Trust in a recommendation system (RS) is often algorithmically incorporated using implicit or explicit feedback of user-perceived trustworthy social neighbors, and evaluated using user-reported trustworthiness of recommended items. However, real-life recommendation settings can feature group disparities in trust, power, and prerogatives. Our study examines a complementary view of trust which relies on the editorial power relationships and attitudes of all stakeholders in the RS application domain. We devise a simple, first-principles metric of editorial authority, i.e., user preferences for recommendation sourcing, veto power, and incorporating user feedback, such that one RS user group confers trust upon another by ceding or assigning editorial authority. In a mixed-methods study at Virginia Tech, we surveyed faculty, teaching assistants, and students about their preferences of editorial authority, and hypothesis-tested its relationship with trust in algorithms for a hypothetical ‘Suggested Readings’ RS. We discover that higher RS editorial authority assigned to students is linked to the relative trust the course staff allocates to RS algorithm and students. We also observe that course staff favors higher control for the RS algorithm in sourcing and updating the recommendations long-term. Using content analysis, we discuss frequent staff-recommended student editorial roles and highlight their frequent rationales, such as perceived expertise, scaling the learning environment, professional curriculum needs, and learner disengagement. We argue that our analyses highlight critical user preferences to help detect editorial power asymmetry and identify RS use-cases for supporting teaching and research.
学习信任:理解教育推荐系统的编辑权威和信任
推荐系统中的信任通常通过算法结合用户感知的可信赖的社会邻居的隐式或显式反馈,并使用用户报告的推荐项目可信度来评估。然而,现实生活中的推荐设置可能在信任、权力和特权方面存在群体差异。我们的研究考察了信任的互补观点,它依赖于RS应用领域中所有利益相关者的编辑权力关系和态度。我们设计了一个简单的、第一原则的编辑权威度量,即用户对推荐来源的偏好、否决权和合并用户反馈,这样一个RS用户组就可以通过放弃或分配编辑权威来信任另一个用户组。在弗吉尼亚理工大学的一项混合方法研究中,我们调查了教师、助教和学生对编辑权威的偏好,并对其与假设的“建议阅读”RS算法信任的关系进行了假设检验。我们发现,分配给学生的较高RS编辑权威与课程工作人员分配给RS算法和学生的相对信任有关。我们还观察到,课程工作人员倾向于对RS算法的长期采购和更新建议进行更高的控制。使用内容分析,我们讨论了员工推荐的学生编辑角色,并强调了他们常见的理由,如感知专业知识、扩展学习环境、专业课程需求和学习者脱离参与。我们认为,我们的分析突出了关键的用户偏好,以帮助检测编辑权力不对称,并确定RS用例以支持教学和研究。
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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