研究说明:检查大规模审查数据中的潜在偏差

Jennifer Allen, M. Mobius, David M. Rothschild, D. Watts
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引用次数: 12

摘要

我们研究了Facebook 10万亿个单元URL数据集中的潜在偏见,该数据集由其平台上共享的URL及其参与度指标组成。尽管数据集的规模空前,但为了保护用户隐私,它还是通过两种方式进行了更改:1)在参与计数中添加不同的私人噪音,2)以100的公共共享阈值审查数据,以包含URL。为了了解这些变化如何影响从数据中得出的结论,我们估计了大规模审查URL数据集中假新闻的普遍性,并将其与较小的代表性数据集的估计值进行了比较。我们表明,审查可以极大地改变从Facebook数据集得出的结论。由于这100个公众份额的阈值,来自Facebook URL数据集的描述性统计数据高估了假新闻和新闻的总体份额高达4倍。最后,我们对数据审查提出了更普遍的建议。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Research note: Examining potential bias in large-scale censored data
We examine potential bias in Facebook’s 10-trillion cell URLs dataset, consisting of URLs shared on its platform and their engagement metrics. Despite the unprecedented size of the dataset, it was altered to protect user privacy in two ways: 1) by adding differentially private noise to engagement counts, and 2) by censoring the data with a 100-public-share threshold for a URL’s inclusion. To understand how these alterations affect conclusions drawn from the data, we estimate the preva-lence of fake news in the massive, censored URLs dataset and compare it to an estimate from a smaller, representative dataset. We show that censoring can substantially alter conclusions that are drawn from the Facebook dataset. Because of this 100-public-share threshold, descriptive statis-tics from the Facebook URLs dataset overestimate the share of fake news and news overall by as much as 4X. We conclude with more general implications for censoring data.
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来源期刊
CiteScore
20.70
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