Extracting relationship between browser history items for improved client-side analytics and recommendations

Goutham Reddy Kotapalle, Harish Kandala, Krishna Shravya Gade
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Abstract

Web browsers are one of the most used client-side software in today’s world and maintaining the details of the user’s search is one of the primary tasks of today’s browsers. However, the browsing history management methodologies that are currently used to save and visualize the details of the user’s search can be improved by a great extent to make it a lot easier for the user to browse data over the internet. The techniques used by the modern browsers in doing so are, to an extent, inefficient due to the fact that they only show a serial list of URLs the user queried for and the time at which they were queried with no details of how the user actually ended up reaching a particular page. The primary issue with such methodologies is that the browsers do not maintain the details of the relationship between various history items. This paper provides a solution to this issue with a practical implementation of a client-side browser history management extension that solves the above-mentioned problems and hence describes how the user’s browsing experience can be enhanced.
提取浏览器历史记录项之间的关系,以改进客户端分析和推荐
Web浏览器是当今世界最常用的客户端软件之一,维护用户搜索的细节是当今浏览器的主要任务之一。然而,目前用于保存和可视化用户搜索细节的浏览历史管理方法可以在很大程度上得到改进,使用户更容易在互联网上浏览数据。现代浏览器使用的技术在某种程度上是低效的,因为它们只显示用户查询的url的串行列表和查询时间,而不显示用户如何最终到达特定页面的详细信息。这种方法的主要问题是浏览器不维护各种历史记录项之间关系的细节。本文通过一个客户端浏览器历史管理扩展的实际实现提供了解决这个问题的方案,该扩展解决了上述问题,从而描述了如何增强用户的浏览体验。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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