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From blurry numbers to clear preferences: A mechanism to extract reputation in social networks

机译:从模糊的数字到清晰的偏好:一种在社交网络中获取声誉的机制

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摘要

Complex social networks are typically used in order to represent and structure social relationships that do not follow a predictable pattern of behaviour. Due to their openness and dynamics, these networks make participants continuously deal with uncertainty before any type of interaction. Reputation appears as a key concept helping users to mitigate such uncertainty. Most of the reputation mechanisms proposed in the literature are based on numerical opinions (ratings), and consequently, they are exposed to potential problems such as the subjectivity in the opinions and their consequent inaccurate aggregation. With these problems in mind, this paper presents a reputation mechanism based on the concepts of pairwise elicitation processes and knock-out tournaments. The main objective of this mechanism is to build reputation rankings from qualitative opinions, thereby removing the subjectivity problems associated with the aggregation of quantitative opinions. The proposed approach is evaluated with different data sets from the MovieLens and Flixster web sites.
机译:通常使用复杂的社交网络来表示和构建不遵循可预测行为模式的社交关系。由于其开放性和动态性,这些网络使参与者能够在进行任何类型的交互之前不断应对不确定性。信誉似乎是帮助用户减轻这种不确定性的关键概念。文献中提出的大多数声誉机制都是基于数字意见(评级),因此,它们会面临潜在的问题,例如意见的主观性以及随之而来的不准确汇总。考虑到这些问题,本文提出了基于成对启发过程和淘汰赛的概念的信誉机制。该机制的主要目的是从定性意见建立声誉排名,从而消除与定量意见汇总相关的主观性问题。建议的方法是使用MovieLens和Flixster网站上的不同数据集进行评估的。

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