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Establishing a Strong Baseline for Privacy Policy Classification

机译:为隐私政策分类建立强大的基线

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Digital service users are routinely exposed to Privacy Policy consent forms, through which they enter contractual agreements consenting to the specifics of how their personal data is managed and used. Nevertheless, despite renewed importance following legislation such as the European GDPR, a majority of people still ignore policies due to their length and complexity. To counteract this potentially dangerous reality, in this paper we present three different models that are able to assign pre-defined categories to privacy policy paragraphs, using supervised machine learning. In order to train our neural networks, we exploit a dataset containing 115 privacy policies defined by US companies. An evaluation shows that our approach outperforms state-of-the-art by 5% over comparable and previously-reported F1 values. In addition, our method is completely reproducible since we provide open access to all resources. Given these two contributions, our approach can be considered as a strong baseline for privacy policy classification.
机译:数字服务用户经常接触到隐私政策同意书,他们通过其进入关于其个人数据如何管理和使用的细节的合同协议。然而,尽管在欧洲GDPR等立法后再重新调整了重要性,但大多数人仍然忽视了由于其长度和复杂性而忽视政策。为了抵消这种潜在的危险现实,在本文中,我们展示了三种不同的模型,可以使用受监管机器学习将预定义的类别分配给隐私政策段落。为了培训我们的神经网络,我们利用了包含美国公司定义的115个隐私政策的数据集。评估表明,我们的方法优于最先进的5%在可比较和以前报告的F1值上。此外,我们的方法完全可再现,因为我们提供对所有资源的开放访问。鉴于这两个贡献,我们的方法可以被视为隐私政策分类的强大基线。

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