Enhancing User Awareness and Control of Web Tracking with ManTra

D. Re, Claudio Carpineto
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引用次数: 1

Abstract

Web trackers can build accurate topical user profiles(e.g., in terms of habits and personal characteristics) by monitoring a user's browsing activities across websites. This process, known as behavioral targeting, has a number of practical benefits but it also raises privacy concerns. Most existing techniques either try to block web tracking altogether or aim to endow it with privacy preserving mechanisms, but they are system-centered rather than user-centered. Nowadays, the majority of users want to have some degree of control over their privacy, while their perspectives and feelings towards web tracking maybe different, ranging from a desire to avoid being profiled at all to a willingness to trade personal information for better services. Regardless of a specific user's preference, from a technical point of view there is is no simple way for him/her to monitor, let alone to influence, the behavior of web trackers. In this paper, we describe an approach which makes users aware of their likely tracking profile and gives them the possibility to bias the profile towards both ends of the web tracking spectrum, either by improving its accuracy beyond the tracker capabilities (thus emphasizing behavioral targeting) or by filling in false interests(thus increasing privacy). This goal is achieved by simulating the process of learning a user profile on the part of the tracker and then by retrofitting a web traffic suitable for producing the desired profile. Our approach has been implemented as a web browser extension called ManTra (Management of Tracking). The system has been evaluated in several dimensions, including its ability to learn an accurate ad-oriented user profile and to influence the behavior of a commercial tool for web tracking personalization, i.e., Google's Ads Settings.
使用ManTra增强用户对Web跟踪的意识和控制
网络跟踪器可以建立准确的用户配置文件(例如;(就习惯和个人特征而言),通过监控用户在网站上的浏览活动。这个过程被称为行为定位,有很多实际的好处,但也引起了隐私问题。大多数现有技术要么试图完全阻止网络跟踪,要么旨在赋予其隐私保护机制,但它们都是以系统为中心,而不是以用户为中心。如今,大多数用户都希望对自己的隐私有一定程度的控制,而他们对网络跟踪的看法和感受可能有所不同,从希望完全避免被记录到愿意用个人信息交换更好的服务。无论具体用户的偏好如何,从技术角度来看,他/她没有简单的方法来监控,更不用说影响网络跟踪器的行为了。在本文中,我们描述了一种方法,该方法使用户意识到他们可能的跟踪配置文件,并使他们有可能将配置文件偏向于网络跟踪频谱的两端,要么通过提高其准确性超越跟踪器功能(从而强调行为定位),要么通过填写虚假兴趣(从而增加隐私)。这个目标是通过模拟学习用户配置文件的过程来实现的,然后通过改造一个适合产生所需配置文件的网络流量。我们的方法已经被实现为一个名为ManTra(跟踪管理)的web浏览器扩展。该系统已经在几个方面进行了评估,包括其学习准确的广告导向用户档案的能力,以及影响网络跟踪个性化的商业工具的行为,即谷歌的广告设置。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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