Recommendation systems and assistants (in short, recommenders) influence through online platforms most actions of our daily lives, suggesting items or providing solutions based on users' preferences or requests. This survey systematically reviews, categories, and discusses the impact of recommenders in four human-AI ecosystems -- social media, online retail, urban mapping and generative AI ecosystems. Its scope is to systematise a fast-growing field in which terminologies employed to classify methodologies and outcomes are fragmented and unsystematic. This is a crucial contribution to the literature because terminologies vary substantially across disciplines and ecosystems, hindering comparison and accumulation of knowledge in the field. We follow the customary steps of qualitative systematic review, gathering 154 articles from different disciplines to develop a parsimonious taxonomy of methodologies employed (empirical, simulation, observational, controlled), outcomes observed (concentration, content degradation, discrimination, diversity, echo chamber, filter bubble, homogenisation, polarisation, radicalisation, volume), and their level of analysis (individual, item, and ecosystem). We systematically discuss substantive and methodological commonalities across ecosystems, and highlight potential avenues for future research. The survey is addressed to scholars and practitioners interested in different human-AI ecosystems, policymakers and institutional stakeholders who want to understand better the measurable outcomes of recommenders, and tech companies who wish to obtain a systematic view of the impact of their recommenders.
翻译:推荐系统与助手(简称推荐器)通过在线平台深刻影响着我们日常生活中的大多数行为,它们基于用户偏好或请求推荐物品或提供解决方案。本综述系统性地回顾、分类并讨论了推荐器在四个人机生态系统——社交媒体、在线零售、城市地图与生成式人工智能生态系统——中的影响。其目的在于系统化一个快速发展的领域,该领域中用于分类方法与结果的术语零散且缺乏系统性。这对文献至关重要,因为不同学科与生态系统间术语差异显著,阻碍了该领域的知识比较与积累。我们遵循定性系统综述的常规步骤,收集了来自不同学科的154篇文献,构建了关于所采用方法(实证、模拟、观察、控制)、观测结果(集中度、内容退化、歧视、多样性、回音室、过滤气泡、同质化、极化、极端化、规模)及其分析层次(个体、物品、生态系统)的简约分类法。我们系统讨论了跨生态系统的实质性与方法论共性,并指出了未来研究的潜在方向。本综述面向关注不同人机生态系统的学者与从业者、希望更好理解推荐器可测量结果的政策制定者与机构利益相关者,以及希望系统了解其推荐器影响的技术公司。