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Personalized recommendation algorithm based on the chance discovery in social network services

机译:基于社交网络服务中机会发现的个性化推荐算法

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With the arrival of the information age, people are faced with a large number of information resources on Internet, in order to solve the problem of information overload, the recommendation algorithm has been used in lots of information systems and Internet applications, however, most traditional recommendation systems have problems with cold start and recommended homogeneity. This paper introduces the relevant theories of chance discovery, discusses the advantages of chance discovery, which can connect the weak signals demand with the implicit related resources, and proposes a personalized recommendation algorithm based on the chance discovery so as to dig deeper into the potential requirements and preferences of users. In the experiment, we not only consider the precision but also refer to the diversity and novelty as the evaluation index. Through the extensive experiments, we compared with traditional recommendation algorithms, and then it is proved that our algorithm is helpful to improve the quality of the recommendation.
机译:随着信息时代的到来,人们在互联网上面临着大量的信息资源,为了解决信息过载的问题,推荐算法已经在很多信息系统和互联网应用中得到了应用,但是,大多数传统的推荐系统在冷启动和推荐的同质性方面存在问题。本文介绍了机会发现的相关理论,讨论了机会发现的优点,可以将弱信号需求与隐式相关资源联系起来,并提出了一种基于机会发现的个性化推荐算法,以便对潜在需求进行更深入的研究。和用户的偏好。在实验中,我们不仅考虑精度,而且将多样性和新颖性作为评价指标。通过大量的实验,我们与传统的推荐算法进行了比较,证明了该算法对提高推荐质量有帮助。

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