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How do users interact with algorithm recommender systems? The interaction of users, algorithms, and performance

机译:用户如何与算法推荐系统进行交互?用户,算法和性能的互动

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摘要

Although algorithms have been widely used to deliver useful applications and services, it is unclear how users actually experience and interact with algorithm-driven services. This ambiguity is even more troubling in news recommendation algorithms, where thorny issues are complicated. This study investigates the user experience and usability of algorithms by focusing on users' cognitive process to understand how qualities/features are received and transformed into experiences and interaction. This work examines how users perceive and feel about issues in news recommendations and how they interact and engage with algorithm-recommended news. It proposes an algorithm experience model of news recommendation integrating the heuristic process of cognitive, affective, and behavioral factors. The underlying algorithm can affect in different ways the user's perception and trust of the system. The heuristic affect occurs when users' subjective feelings about transparency and accuracy act as a mental shortcut: users considered transparent and accurate systems convenient and useful. The mediating role of trust suggests that establishing algorithmic trust between users and NRS could enhance algorithm performance. The model illustrates the users' cognitive processes of perceptual judgment as well as the motivation behind user behaviors. The results highlight a link between news recommendation systems and user interaction, providing a clearer conceptualization of user-centered development and the evaluation of algorithm-based services.
机译:虽然算法已被广泛用于提供有用的应用和服务,但目前尚不清楚用户如何与算法驱动的服务进行实际体验和交互。在新闻推荐算法中,这种歧义更令人不安,棘手的问题很复杂。本研究通过关注用户的认知过程来了解算法的用户体验和可用性,以了解如何收到质量/功能和转换为经验和交互。这项工作审查了用户如何感知和了解新闻建议中的问题以及它们如何与算法建议的新闻进行互动和互动。它提出了一种算法经验模型的新闻推荐,整合了认知,情感和行为因素的启发式过程。底层算法可以以不同方式影响用户的感知和信任。当用户对透明度和准确性的主观感受作为心理捷径时,发生启发式的影响:用户考虑了透明和准确的系统方便和有用。信任的中介角色表明,在用户和NR之间建立算法信任可以增强算法性能。该模型说明了用户的认知过程的认知过程以及用户行为背后的动机。结果突出了新闻推荐系统和用户交互之间的链接,提供了更清晰的用户中心开发的概念化和基于算法的服务的评估。

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