Accurately analyzing and modeling online browsing behavior play a key role in understanding users and technology interactions. In this work, we design and conduct a user study to collect browsing data from 31 participants continuously for 14 days and self-reported browsing patterns. We combine self-reports and observational data to provide an up-to-date measurement study of online browsing behavior. We use these data to empirically address the following questions: (1) Do structural patterns of browsing differ across demographic groups and types of web use?, (2) Do people have correct perceptions of their behavior online?, and (3) Do people change their browsing behavior if they are aware of being observed? In response to these questions, we find significant differences in level of activity based on user age, but not based on race or gender. We also find that users have significantly different behavior on Security Concerns websites, which may enable new behavioral methods for automatic detection of security concerns online. We find that users significantly overestimate the time they spend online, but have relatively accurate perceptions of how they spend their time online. We find no significant changes in behavior over the course of the study, which may indicate that observation had no effect on behavior, or that users were consciously aware of being observed throughout the study
翻译:准确分析和模拟在线浏览行为在理解用户和技术互动方面发挥着关键作用。 在这项工作中,我们设计并开展用户研究,从31名参与者连续收集浏览数据,持续14天,并自我报告浏览模式。我们将自我报告和观察数据结合起来,以提供在线浏览行为的最新衡量研究。我们利用这些数据实证解决以下问题:(1) 浏览行为的结构模式在人口群体和网络使用类型之间存在差异吗?(2) 人们对其在线行为有正确的认识吗?和(3) 如果人们知道自己在网上活动,是否改变其浏览行为?在回答这些问题时,我们发现基于用户年龄的活动水平存在重大差异,但并非基于种族或性别。我们还发现用户在网上对在线浏览行为有显著差异,这可能为在线安全关切的自动检测提供新的行为方法。我们发现用户在网上花费的时间估计过高,但对于他们如何在网上度过时间有相对准确的认识。我们发现,在观察过程中的行为变化不大,我们发现在观察过程中没有意识力研究中发现,对用户的认识力研究过程没有影响。