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Applying Trust Metrics Based on User Interactions to Recommendation in Social Networks

机译:将基于用户交互的信任度量应用于社交网络中的推荐

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Recommender systems have been strongly researched within the last decade. With the arising and popularization of digital social networks a new field has been opened for social recommendations. Considering the network topology, users interactions, or estimating trust between users are some of the new strategies that recommender systems can take into account in order to adapt their techniques to these new scenarios. We introduce MarkovTrust, a way to infer trust from Twitter interactions and to compute trust between distant users. MarkovTrust is based on Markov chains, which makes it simple to be implemented and computationally efficient. We study the properties of this trust metric and study its application in a recommender system of tweets.
机译:在过去的十年中,对推荐系统进行了深入研究。随着数字社交网络的兴起和普及,为社交推荐开辟了一个新领域。考虑网络拓扑,用户交互或估计用户之间的信任度是推荐系统可以考虑的一些新策略,以使他们的技术适应这些新方案。我们介绍了MarkovTrust,它是一种从Twitter交互推断信任并计算远程用户之间信任的方法。 MarkovTrust基于Markov链,因此易于实现且计算效率高。我们研究此信任度量的属性,并研究其在推文推荐系统中的应用。

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