用于浏览器支持Web上习惯性用户活动的预测算法

J. Brank, Natasa Milic-Frayling, A. Frayling, G. Smyth
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引用次数: 4

摘要

用户在Web上的日常活动会导致对Web站点和页面的重新访问。标准浏览器应用程序对这种习惯性行为提供有限的支持。它们通常公开由系统自动记录或由用户手动创建的访问过的url列表,例如书签。研究表明,这些方法在支持日常用户活动方面并不成功。根据我们的用户研究,我们设计了一个浏览器功能,可以自动公开候选url供用户重新访问。在本文中,我们描述和评估了我们用来模拟用户习惯行为的算法。我们演示了结构化导航历史模型如何促进相关使用模式的发现,并支持适用于相对较短的个人导航历史的预测算法。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Predictive algorithms for browser support of habitual user activities on the Web
Routine user activities on the Web result in the revisitation of Web sites and pages. Standard browser applications provide limited support for this type of habitual behaviour. They typically expose lists of visited URLs that are automatically recorded by the system or manually created by the user, such as bookmarks. Studies have shown that these approaches are not successful in supporting routine user activities. Informed by our user research, we designed a browser feature that automatically exposes candidate URLs for revisitation by the user. In this paper, we describe and evaluate the algorithms that we use to model the user's habitual behaviour. We demonstrate how a structured navigation history model facilitates the discovery of relevant usage patterns and supports predictive algorithms that are applicable to relatively short personal navigation histories.
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