循规蹈矩:建立博物馆推荐的高效用户模型

Pierre-Edouard Osche, Sylvain Castagnos, A. Napoli, Y. Naudet
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引用次数: 14

摘要

与许多应用程序领域相反,在博物馆中推荐物品不仅仅是一个偏好问题。当然,访问者希望得到可能使他们感兴趣或满意的建议。然而,还应考虑到其他因素。最近的作品使用访问方式[1]或项目之间的最短距离[2]来适应推荐列表。但是,据我们所知,文献中没有一个模型旨在实时推断一个包含人群容限、距离容限、预期用户控制、疲劳、拥塞点等变量的整体用户模型。为了提高用户的满意度和享受度,我们提出了一个包含心理、生理和社会变量的新的表征模型。我们展示了如何从用户观察中推断这些特征(随时间的地理定位、移动速度等),并讨论了如何将它们联合起来用于序列推荐。这项工作仍处于早期发展阶段,理论多于实验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Walk the line: Toward an efficient user model for recommendations in museums
Contrary to many application domains, recommending items within a museum is not only a question of preferences. Of course, the visitors expect suggestions that are likely to interest or please them. However, additional factors should be taken into account. Recent works use the visiting styles [1] or the shortest distance between items [2] to adapt the list of recommendations. But, as far as we know, no model of the literature aims at inferring in real time an holistic user model which includes variables such as the crowd tolerance, the distance tolerance, the expected user control, the fatigue, the congestion points, etc. As a work-in-progress, we propose a new representation model which includes psychological, physical and social variables so as to increase user satisfaction and enjoyment. We show how we can infer these characteristics from the user observations (geolocalization over time, moving speed, ...) and we discuss how we can use them jointly for a sequence recommendation purpose. This work is still in an early stage of development and remains more theoretical than experimental.
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