Online Tracking: When Does it Become Stalking?

B. Amarasekara, A. Mathrani, C. Scogings
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引用次数: 1

Abstract

Online user activities are tracked for many purposes. In e-commerce, cross-domain tracking is used to quantify and pay for web-traffic generation. Our previous research studies have shown that HTTP cookie-based tracking process, though reliable, can fail due to technical reasons, as well as through fraudulent manipulation by traffic generators. In this research study, we evaluate which of the previously published tracking mechanisms are still functional. We assess the efficacy and utility of those methods to create a robust tracking mechanism for e-commerce. A failsafe and robust tracking mechanism does not need to translate into further privacy intrusions. Many countries are rushing to introduce new regulations, which can have a negative impact on the development of robust technologies in an inherently stateless eco-system. We used a multi-domain, purpose-built simulation environment to experiment common tracking scenarios, and to describe the parameters that define the minimum tracking requirement use-cases, and practices that result in invading privacy of users. This study will help practitioners in their implementations, and policy developers and regulators to draw up policies that would not curtail the development of robust tracking technologies that are needed in e-commerce activities, while safeguarding the privacy of internet users.
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在线跟踪:什么时候变成了跟踪?
跟踪在线用户活动有多种用途。在电子商务中,跨域跟踪被用于量化和支付网络流量的产生。我们之前的研究表明,基于HTTP cookie的跟踪过程虽然可靠,但可能由于技术原因以及流量生成器的欺诈性操纵而失败。在这项研究中,我们评估了哪些先前发表的跟踪机制仍然有效。我们评估了这些方法的有效性和实用性,以创建一个强大的电子商务跟踪机制。故障保险和健壮的跟踪机制不需要转化为进一步的隐私入侵。许多国家正急于引入新的法规,这可能会对在一个本质上无国籍的生态系统中开发强大的技术产生负面影响。我们使用了一个多领域的、专门构建的模拟环境来实验常见的跟踪场景,并描述了定义最小跟踪需求用例的参数,以及导致侵犯用户隐私的实践。这项研究将有助从业员实施,以及政策制订者和规管机构制定政策,既不妨碍电子商贸活动所需的稳健追踪技术的发展,又能保障互联网用户的私隐。
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