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Reconstructing User's Attention on the Web through Mouse Movements and Perception-Based Content Identification

机译:通过鼠标移动和基于感知的内容识别来重建用户对Web的关注

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摘要

Eye tracking is one of the most exploited techniques in literature for finding usability problems in web-based user interfaces (UIs). However, it is usually employed in a laboratory setting, considering that an eye-tracker is not commonly used in web browsing. In contrast, web application providers usually exploit remote techniques for large-scale user studies (e.g. A/B testing), tracking low-level interactions such as mouse clicks and movements. In this article, we discuss a method for predicting whether the user is looking at the content pointed by the cursor, exploiting the mouse movement data and a segmentation of the contents in a web page. We propose an automatic method for segmenting content groups inside a web page that, applying both image and code analysis techniques, identifies the user-perceived group of contents with a mean pixel-based error around the 20%. In addition, we show through a user study that such segmentation information enhances the precision and the accuracy in predicting the correlation between between the user's gaze and the mouse position at the content level, without relaying on user-specific features.
机译:眼动追踪是文献中发现基于Web的用户界面(UI)中的可用性问题时最常被利用的技术之一。但是,考虑到眼动仪在网络浏览中并不常用,因此通常在实验室环境中使用。相比之下,Web应用程序提供商通常利用远程技术进行大规模的用户研究(例如A / B测试),跟踪诸如鼠标单击和移动之类的低级交互。在本文中,我们将讨论一种利用鼠标移动数据和网页中内容的分段来预测用户是否正在查看光标指向的内容的方法。我们提出了一种用于对网页内的内容组进行细分的自动方法,该方法同时应用了图像分析和代码分析技术,可识别用户感知的内容组,其基于像素的平均误差约为20%。此外,我们通过用户研究表明,这种细分信息可以提高内容级别上预测用户的注视与鼠标位置之间的相关性的准确性和准确性,而无需依赖于用户的特定功能。

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