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Towards a Similarity Metric for Comparing Machine-Readable Privacy Policies

机译:迈向比较机器可读隐私政策的相似性指标

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摘要

Current approaches to privacy policy comparison use strict evaluation criteria (e.g. user preferences) and are unable to state how close a given policy is to fulfil these criteria. More flexible approaches for policy comparison is a prerequisite for a number of more advanced privacy services, e.g. improved privacy-enhanced search engines and automatic learning of privacy preferences. This paper describes the challenges related to policy comparison, and outlines what solutions are needed in order to meet these challenges in the context of preference learning privacy agents.
机译:当前用于隐私策略比较的方法使用严格的评估标准(例如,用户偏好),并且无法说明给定策略满足这些标准的距离。用于策略比较的更加灵活的方法是许多更高级的隐私服务(例如,隐私保护)的先决条件。改进了增强隐私的搜索引擎,并自动学习了隐私偏好。本文描述了与政策比较相关的挑战,并概述了在偏好学习隐私代理的背景下需要哪些解决方案来应对这些挑战。

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