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A Novel Context-Aware Mobile Application Recommendation Approach Based on Users Behavior Trajectories

机译:基于用户行为轨迹的新型背景信息移动应用推荐方法

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摘要

With the rapid development of mobile internet technology, mobile applications (apps) have been rapidly popularized. To facilitate users’ choice of apps, app recommendation is becoming a research hotspot in academia and industry. Although traditional app recommendation approaches have achieved certain results, these methods only mechanically consider the user’s current context information, ignoring the impact of the user’s previous related context on the user’s current selection of apps. We believe this has hindered the further improvement of the recommendation effect. Based on this fact, this paper proposes a novel context-aware mobile application recommendation approach based on user behavior trajectories. We named this approach CMARA, which is the initials acronym of the proposed approach. Specifically, 1) CMARA integrates the heterogeneous information of the target users such as the user’s app, time, and location, into users behavior trajectories to model the users’ app usage preferences; 2) CMARA constructs the context Voronoi diagram using the users’ contextual point and leverages the context Voronoi diagram to build a novel user similarity model; 3) CMARA uses the target user’s current contextual information to generate an app recommendation list that meets the user’s preferences. Through experiments on large-scale real-world data, we verified the effectiveness of CMARA.
机译:随着移动互联网技术的快速发展,移动应用程序(应用程序)已经迅速推广。为方便用户选择的应用,应用程序推荐正在成为学术界和工业的研究热点。虽然传统的应用推荐方法已经实现了某些结果,但这些方法仅在机械上考虑用户的当前上下文信息,忽略了用户之前的相关上下文对用户当前选择的应用程序的影响。我们认为这阻碍了建议效应的进一步改进。基于这一事实,本文提出了一种基于用户行为轨迹的新型情境感知移动应用推荐方法。我们将这种方法命名为CMARA,这是所提出的方法的首字母缩略词。具体而言,1)CMARA将目标用户的异构信息(如用户的应用程序,时间和位置)集成到用户行为轨迹中以建模用户的应用程序使用偏好; 2)CMARA使用用户的上下文点构建上下文Voronoi图,并利用上下文Voronoi图来构建新颖的用户相似性模型; 3)CMARA使用目标用户的当前上下文信息来生成满足用户首选项的应用程序推荐列表。通过对大型现实世界数据的实验,我们验证了CMARA的有效性。

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