A methodology to find Web site keywords

J. D. Velásquez, R. Weber, H. Yasuda, T. Aoki
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引用次数: 18

Abstract

For many companies and/or institutions it is no longer sufficient to have a Web site and high quality products or services. What in many cases makes the difference between success and failure of e-business is the potential of the respective Web site to attract and retain visitors. This potential is determined by a site's content, its design, and technical aspects, such as e.g. time to load the pages among others. We concentrate on the content represented by free text of each of the Web pages. We propose a method to determine the set of the most important words in a Web site from the visitor's point of view. This is done combining usage information with Web page content arriving at a set of keywords determined implicitly by the site's visitors. Applying self-organizing neural networks to the respective usage and content data we identify clusters of typical visitors and the most important pages and words for each cluster. We applied our method to a bank's Web site in order to show its benefits. Institutions that perform consequently and regularly the proposed analysis can design their Web sites according to their visitors' needs and requirements and this way stay ahead of their competitors.
查找网站关键字的方法
对于许多公司和/或机构来说,仅仅拥有一个网站和高质量的产品或服务已经不够了。在许多情况下,决定电子商务成功与失败的是各个网站吸引和留住访问者的潜力。这种潜力是由网站的内容、设计和技术方面决定的,比如加载页面的时间。我们将重点放在每个网页的自由文本所表示的内容上。我们提出了一种从访问者的角度确定网站中最重要的单词集的方法。这是将使用信息与Web页面内容结合起来完成的,这些内容到达一组由站点访问者隐式确定的关键字。将自组织神经网络应用于各自的使用和内容数据,我们确定了典型访问者的集群以及每个集群中最重要的页面和单词。我们将这种方法应用于一家银行的网站,以展示其优点。定期执行建议分析的机构可以根据访问者的需要和要求设计他们的网站,这样就能领先于竞争对手。
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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