应用眼动追踪技术改进网站关键目标识别方法

Juan Domingo Velásquez-Silva
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引用次数: 5

摘要

本文介绍了利用源自网络用户眼动的数据来改进Velasquez和Dujovne通过使用眼动追踪工具设计的识别网站关键对象的方法。给定一个网站,该方法将该网站的请求记录(Web log)、组成该网站的页面以及用户对每个页面的Web对象的兴趣作为输入,并使用调查对其进行量化。随后,在最终应用Web挖掘算法(允许提取Website Key对象)之前,对数据进行转换和预处理。本文提出了一种新的眼动追踪技术的应用,为了省去调查,也就是说,使用更精确的工具来实现对网站关键对象分类的改进。结论是,眼动追踪技术在了解用户在看什么以及什么最吸引他们的注意力方面是有用和准确的。最后,我们确定了当使用眼动仪产生的信息时,有15%到16%的改进。
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Improvement of a Methodology for Website Keyobject Identification through the Application of Eye-Tracking Technologies
This paper introduces the utilization of data originated in the web user ocular movement to improve the methodology for identifying Website Key objects that was designed by Velasquez and Dujovne through the use of eye tracking tools. Given a website, this methodology takes as input the request register (Web log) of the website, the pages that compose it and the interest of users in the web objects of each page, which is quantified using a survey. Subsequently, the data is transformed and preprocessed before finally applying Web mining algorithms that allow the extraction of the Website Key objects. In this paper, a novel application of the eye tracking technology is proposed, in order to dispense with the survey, that is to say, using a more precise tool to achieve an improvement in the classification of the Website Key objects. It was concluded that eye tracking technology is useful and accurate when it comes to knowing what a user looks at and therefore, what attracts their attention the most. Finally, it was established that there is an improvement of between 15% and 16% when using the information generated by the eye tracker.
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