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Trust-Based Recommendation Systems: an Axiomatic Approach

机译:基于信任的推荐系统:公理化方法

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High-quality, personalized recommendations are a key feature in many online systems. Since these systems often have explicit knowledge of social network structures, the recommendations may incorporate this information. This paper focuses on networks that represent trust and recommendation systems that incorporate these trust relationships. The goal of a trust-based recommendation system is to generate personalized recommendations by aggregating the opinions of other users in the trust network. In analogy to prior work on voting and ranking systems, we use the axiomatic approach from the theory of social choice. We develop a set of.ve natural axioms that a trustbased recommendation system might be expected to satisfy. Then, we show that no system can simultaneously satisfy all the axioms. However, for any subset of four of the.ve axioms we exhibit a recommendation system that satis.es those axioms. Next we consider various ways of weakening the axioms, one of which leads to a unique recommendation system based on random walks. We consider other recommendation systems, including systems based on personalized PageRank, majority of majorities, and minimum cuts, and search for alternative axiomatizations that uniquely characterize these systems. Finally, we determine which of these systems are incentive compatible, meaning that groups of agents interested in manipulating recommendations can not induce others to share their opinion by lying about their votes or modifying their trust links. This is an important property for systems deployed in a monetized environment.
机译:高质量的个性化推荐是许多在线系统中的关键功能。由于这些系统通常具有对社交网络结构的明确了解,因此建议可能会合并此信息。本文着重介绍代表信任和推荐系统的网络,这些系统结合了这些信任关系。基于信任的推荐系统的目标是通过聚合信任网络中其他用户的意见来生成个性化推荐。与先前有关投票和排名系统的工作类似,我们使用社会选择理论中的公理化方法。我们开发了一套可以期望基于信任的推荐系统满足的五种自然公理。然后,我们证明没有系统可以同时满足所有公理。但是,对于四个公理的任何子集,我们都会展示一个满足这些公理的推荐系统。接下来,我们考虑削弱公理的各种方法,其中一种方法导致了基于随机游走的独特推荐系统。我们考虑其他推荐系统,包括基于个性化PageRank的系统,多数多数和最低限度的系统,并搜索可替代的公理化,这些特征是这些系统的唯一特征。最后,我们确定这些系统中的哪一个是激励兼容的,这意味着对操纵建议感兴趣的代理群体无法通过撒谎或修改信任链接来诱使他人分享自己的观点。对于在获利环境中部署的系统而言,这是重要的属性。

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