A Comparative Analysis of Personalization Techniques for a Mobile Application

P. Nurmi, Marja Hassinen, K. Lee
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引用次数: 15

Abstract

In order to adapt to the environment of the user, devices have to be able to deduce the user's goals and information needs. In mobile environments, the goals and information needs of the user potentially depend on the user's situation. Existing work on context-dependent user modeling has mainly focused on specific application domains, most notably location-based services such as tourist guides, or on technological enablers. What is currently lacking is an understanding of when and why different personalization techniques work or fail. In this paper, we compare different classification algorithms on data collected from a mobile application. Our results show that methods that are able to learn tree-structured dependencies seem good candidates for personalization due to (i) the inherent hierarchical nature of context information and (ii) the fast running time of the algorithms. We also suggest two future research issues: (1) obtaining a better understanding of the nature of dependencies in contextual data, and (2) using collaborative user modeling techniques to improve the predictive power of user models.
移动应用个性化技术的比较分析
为了适应用户的环境,设备必须能够推断出用户的目标和信息需求。在移动环境中,用户的目标和信息需求可能取决于用户的情况。现有的与上下文相关的用户建模工作主要集中在特定的应用领域,最著名的是基于位置的服务,比如导游,或者是技术支持。目前缺乏的是对不同个性化技术何时以及为何有效或失败的理解。在本文中,我们比较了从移动应用程序收集的数据的不同分类算法。我们的研究结果表明,能够学习树状结构依赖关系的方法似乎是个性化的好选择,因为(i)上下文信息固有的层次性质和(ii)算法的快速运行时间。我们还提出了两个未来的研究问题:(1)更好地理解上下文数据中依赖关系的本质;(2)使用协作用户建模技术来提高用户模型的预测能力。
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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