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Extended feature combination model for recommendations in location-based mobile services

机译:扩展功能组合模型,用于基于位置的移动服务中的建议

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摘要

With the increasing availability of location-based services, location-based social networks and smart phones, standard rating schema of recommender systems that involve user and item dimensions is extended to three-dimensional (3-D) schema involving context information. Although there are models proposed for dealing with data in this form, the problem of combining it with additional features and constructing a general model suitable for different forms of recommendation system techniques has not been fully explored. This work proposes a technique to reduce 3-D rating data into 2-D for two reasons: employing already developed efficient methods for 2-D on a 3-D data and expanding it with additional features, which are usually 2-D also, if it is necessary. Our experiments show that this reduction is effective. The proposed 2-D model supports content-based, collaborative filtering and hybrid recommendation approaches effectively, whereas we have achieved the best accuracy results for pure collaborative filtering recommendation model. Since our method was built on efficient singular value decomposition-based dimension reduction idea, it also works very efficiently, and in our experiments, we have obtained better run-time results than standard methods developed for 3-D data using higher-order singular value decomposition.
机译:随着基于位置的服务,基于位置的社交网络和智能手机的可用性不断提高,涉及用户和项目维度的推荐系统的标准评级架构已扩展到涉及上下文信息的三维(3-D)架构。尽管已经提出了以这种形式处理数据的模型,但是尚未充分探讨将其与附加功能结合并构造适合于不同形式的推荐系统技术的通用模型的问题。这项工作提出了一种将3D评级数据简化为2D的技术,其原因有两个:在3D数据上采用已经开发的有效方法进行2D转换,并扩展其附加功能(通常也是2D)如果有必要。我们的实验表明这种减少是有效的。所提出的二维模型有效地支持基于内容的协作过滤和混合推荐方法,而对于纯协作过滤推荐模型,我们已经获得了最佳的准确性。由于我们的方法基于有效的基于奇异值分解的降维思想,因此它也非常有效,并且在我们的实验中,与针对使用高阶奇异值的3-D数据开发的标准方法相比,我们获得了更好的运行时结果分解。

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