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On Both Cold-Start and Long-Tail Recommendation with Social Data

机译:在具有社交数据的冷启动和长尾推荐中

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The number of "hits" has been widely regarded as the lifeblood of many web systems, e.g., e-commerce systems, advertising systems and multimedia consumption systems. However, users would not hit an item if they cannot see it, or they are not interested in the item. Recommender system plays a critical role of discovering interesting items from near-infinite inventory and exhibiting them to potential users. Yet, two issues are crippling the recommender systems. One is "how to handle new users", and the other is "how to surprise users". The former is well-known as cold-start recommendation. In this paper, we show that the latter can be investigated as long-tail recommendation. We also exploit the benefits of jointly challenging both cold-start and long-tail recommendation, and propose a novel approach which can simultaneously handle both of them in a unified objective. For the cold-start problem, we learn from side information, e.g., user attributes, user social relationships, etc. Then, we transfer the learned knowledge to new users. For the long-tail recommendation, we decompose the overall interesting items into two parts: a low-rank part for short-head items and a sparse part for long-tail items. The two parts are independently revealed in the training stage, and transfered into the final recommendation for new users. Furthermore, we effectively formulate the two problems into a unified objective and present an iterative optimization algorithm. A fast extension of the method is proposed to reduce the complexity, and extensive theoretical analysis are provided to proof the bounds of our approach. At last, experiments of social recommendation on various real-world datasets, e.g., images, blogs, videos and musics, verify the superiority of our approach compared with the state-of-the-art work.
机译:“命中”的数量被广泛被视为许多网络系统的生命线,例如电子商务系统,广告系统和多媒体消费系统。但是,如果他们无法看到它,用户不会达到物品,或者他们对该项目不感兴趣。推荐系统在从近乎无限库存中发现有趣的物品并将其展示给潜在用户的关键作用。然而,两个问题正在跨越推荐系统。一个是“如何处理新用户”,另一个是“如何让用户感到惊讶”。前者是众所周知的冷启动推荐。在本文中,我们表明后者可以调查为长尾推荐。我们还利用了共同挑战冷启动和长尾建议的好处,并提出了一种新的方法,可以在统一目标中同时处理它们。对于冷启动问题,我们从方面信息中学习,例如用户属性,用户社交关系等。然后,我们将学众的知识转移给新用户。对于长尾建议,我们将整体有趣的物品分解为两部分:用于短头物品的低级部分和长尾物品的稀疏部件。两部分在培训阶段独立揭示,并转移到新用户的最终建议中。此外,我们有效地将这两个问题与统一目标制定并呈现迭代优化算法。提出了一种快速扩展来降低复杂性,并提供了广泛的理论分析来证明我们方法的范围。最后,关于各种现实世界数据集的社会建议的实验,例如图像,博客,视频和音乐,与最先进的工作相比,验证了我们的方法的优势。

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