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Measuring Self-Focus Bias in Community-Maintained Knowledge Repositories

机译:测量社区维护的知识库中的自负偏见

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Self-focus is a novel way of understanding a type of bias in community-maintained Web 2.0 graph structures. It goes beyond previous measures of topical coverage bias by encapsulating both node- and edge-hosted biases in a single holistic measure of an entire community-maintained graph. We outline two methods to quantify self-focus, one of which is very computationally inexpensive, and present empirical evidence for the existence of self-focus using a "hyperlingual" approach that examines 15 different language editions of Wikipedia. We suggest applications of our methods and discuss the risks of ignoring self-focus bias in technological applications.
机译:自我聚焦是一种理解社区维护的Web 2.0图结构中的偏见类型的新颖方法。它通过将节点和边缘托管的偏见都封装在整个社区维护图的单个整体度量中,从而超越了先前的主题覆盖偏见的度量。我们概述了两种量化自我焦点的方法,其中一种方法在计算上非常便宜,并使用“超语言”方法对Wikipedia的15种不同语言版本进行了研究,给出了存在自我焦点的经验证据。我们建议应用我们的方法,并讨论在技术应用中忽略自聚焦偏差的风险。

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