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How Community Feedback Shapes User Behavior

机译:社区反馈如何塑造用户行为

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Social media systems rely on user feedback and rating mechanisms for personalization, ranking, and content filtering. However, when users evaluate content contributed by fellow users (e.g., by liking a post or voting on a comment), these evaluations create complex social feedback effects. This paper investigates how ratings on a piece of content affect its author's future behavior. By studying four large comment-based news communities, we find that negative feedback leads to significant behavioral changes that are detrimental to the community. Not only do authors of negatively-evaluated content contribute more, but also their future posts are of lower quality, and are perceived by the community as such. Moreover, these authors are more likely to subsequently evaluate their fellow users negatively, percolating these effects through the community. In contrast, positive feedback does not carry similar effects, and neither encourages rewarded authors to write more, nor improves the quality of their posts. Interestingly, the authors that receive no feedback are most likely to leave a community. Furthermore, a structural analysis of the voter network reveals that evaluations polarize the community the most when positive and negative votes are equally split.
机译:社交媒体系统依靠用户反馈和评级机制进行个性化,排名和内容过滤。然而,当用户评估由同事(例如,通过在评论中获取帖子或投票)所贡献的内容时,这些评估会创建复杂的社会反馈效果。本文调查了如何对一份内容的评级如何影响其作者的未来行为。通过研究四个基于评论的新闻社区,我们发现负面反馈导致对社区有害的重大行为变化。作者不仅是负面评估的内容的作者贡献更多,而且它们的未来帖子也具有较低的质量,并被社区所察觉所示。此外,这些作者更有可能随后对他们的同伴消极评估他们的同事,通过社区渗透这些影响。相比之下,积极反馈不会带来类似的效果,并且既不鼓励奖励作者写更多,也不会提高其职位的质量。有趣的是,没有反馈的作者最有可能留下社区。此外,选民网络的结构分析表明,当正和负面投票同样分裂时,评估最多地极化了社区。

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