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Techniques for cold-starting context-aware mobile recommender systems for tourism

机译:用于旅游业的冷启动上下文感知移动推荐系统的技术

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Novel research works in recommender systems have illustrated the benefits of exploiting contextual information, such as the time and location of a suggested place of interest, in order to better predict the user ratings and produce more relevant recommendations. But, when deploying a context-aware system one must put in place techniques for operating in the cold-start phase, i.e., when no or few ratings are available for the items listed in the system catalogue and it is therefore hard to predict the missing ratings and compose relevant recommendations. This problem has not been directly tackled in previous research. Hence, in order to address it, we have designed and implemented several novel algorithmic components and interface elements in a fully operational points of interest (POI) mobile recommender system (STS). In particular, in this article we illustrate the benefits brought by using the user personality and active learning techniques. We have developed two extended versions of the matrix factorisation algorithm to identify what items the users could and should rate and to compose personalised recommendations. While context-aware recommender systems have been mostly evaluated offline, a testing scenario that suffers from many limitations, in our analysis we evaluate the proposed system in live user studies where the graphical user interface and the full interaction design play a major role. We have measured the system effectiveness in terms of several metrics such as: the quality and quantity of acquired ratings-in-context, the recommendation accuracy (MAE), the system precision, the perceived recommendation quality, the user choice satisfaction, and the system usability. The obtained results confirm that the proposed techniques can effectively overcome the identified cold-start problem.
机译:推荐系统中的新颖研究工作已经说明了利用上下文信息(例如建议的兴趣点的时间和位置)的好处,以便更好地预测用户评分并产生更相关的推荐。但是,在部署上下文感知系统时,必须采用一种在冷启动阶段运行的技术,即,当系统目录中列出的项目没有可用评级或只有很少评级时,因此很难预测丢失的情况评分并撰写相关建议。这个问题在以前的研究中还没有直接解决。因此,为了解决这个问题,我们在完全操作的兴趣点(POI)移动推荐器系统(STS)中设计和实现了几种新颖的算法组件和接口元素。特别是,在本文中,我们说明了使用用户个性和主动学习技术所带来的好处。我们已经开发了矩阵因子分解算法的两个扩展版本,以识别用户可以和应该评价的项目以及撰写个性化建议。尽管上下文感知的推荐系统大多是在脱机状态下进行评估的,但该测试方案存在许多局限性,但在我们的分析中,我们在实时用户研究中评估了所提议的系统,其中图形用户界面和完整的交互设计起着主要作用。我们已经根据几个指标来衡量系统有效性,例如:获得的上下文评级的质量和数量,推荐准确性(MAE),系统精度,感知的推荐质量,用户选择满意度以及系统可用性。获得的结果证实了所提出的技术可以有效地克服所识别的冷启动问题。

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