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Community-Based Recommendations on Twitter: Avoiding the Filter Bubble

机译:Twitter上基于社区的建议:避免过滤泡沫

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Due to their success, social network platforms are considered today as a major communication mean. In order to increase user engagement, they rely on recommender systems to personalize individual experience by filtering messages according to user interest and/or neighborhood. However some recent results exhibit that this personalization of content might increase the echo chamber effect and create filter bubbles. These filter bubbles restrain the diversity of opinions regarding the recommended content. In this paper, we first realize a thorough study of communities on a large Twitter dataset to quantify how recommender systems affect users' behavior and create filter bubbles. Then we propose the Community Aware Model (CAM) to counter the impact of different recommender systems on information consumption. Our results show that filter bubbles concern up to 10% of users and our model based on similarities between communities enhance recommender systems.
机译:由于他们的成功,今天认为社交网络平台是一个主要的沟通意味着。为了提高用户参与,他们依赖于推荐系统通过根据用户兴趣和/或邻域过滤消息来个性化个性化个人体验。然而,最近的一些结果表明,这种含量的个性化可能会增加回声室效果并产生过滤泡泡。这些过滤气泡会限制有关推荐内容的意见的多样性。在本文中,我们首先实现了对大型Twitter数据集的社区彻底研究,以量化推荐系统如何影响用户的行为并创建过滤泡沫。然后,我们提出了社区意识模型(CAM)来对抗不同推荐系统对信息消费的影响。我们的结果表明,过滤泡沫涉及用户高达10%的用户和我们的模型,基于社区之间的相似性增强推荐系统。

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