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A Novel APP Recommendation Method Based on SVD and Social Influence

机译:基于SVD和社会影响力的APP推荐新方法。

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The market for Mobile Applications (APP for short) is perhaps the most thriving sector nowadays in the software industry with about 4 million APPs around the world. APP recommendation is playing an increasingly important role in every APP store to enhance user experience and raise revenue. Existing recommendation strategies are mainly based on user's individual information while their social relations are often neglected. However, it is an intuitive knowledge that users tend to be affected by their friends' recommendation in the choice of APPs. Therefore, it is worth investigating whether and how social influence can be employed for APP recommendation. In this paper, to answer the above question, we propose a novel APP recommendation method based on SVD (Singular Value Decomposition) algorithm and social influence which is defined by an extended CD (Credit Distribution) model. The experimental results based on the real-world datasets from Tencent APP Store demonstrate that our proposed method with social influence can achieve a better recommendation results than conventional SVD based algorithm without social relations.
机译:移动应用程序市场(简称APP)可能是当今软件行业最繁荣的领域,在全球范围内拥有约400万个APP。 APP推荐在每个APP商店中都扮演着越来越重要的角色,以增强用户体验并增加收入。现有的推荐策略主要基于用户的个人信息,而经常忽略其社交关系。但是,直观的知识是,用户在选择APP时往往会受到朋友推荐的影响。因此,有必要研究是否以及如何利用社会影响力来推荐APP。在本文中,为回答上述问题,我们提出了一种基于SVD(奇异值分解)算法和社会影响力的新型APP推荐方法,该方法由扩展CD(信用分配)模型定义。基于腾讯APP Store的真实数据集的实验结果表明,与传统的基于SVD的无社会关系的算法相比,我们提出的具有社会影响力的方法可以获得更好的推荐效果。

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