集成购买模式和遍历模式以预测电子商务网站中的HTTP请求

Sudhir Vallamkondu, L. Gruenwald
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引用次数: 16

摘要

一个电子商务(电子商务)站点的成功是根据访问该站点的用户数量来衡量的。对一个成功的EC网站的基本质量的调查表明,减少用户感知延迟是继良好的网站导航质量之后的第二个最重要的质量。减少用户感知延迟的最成功方法是从过去的用户访问历史中提取路径遍历模式,以预测未来的用户遍历行为并预取所需的资源。然而,这种方法只适用于没有购买行为的非ec站点。本文描述了一种预测电子商务网站用户行为的新方法。该方法的核心是从过去用户的购买和路径遍历模式的集成数据中提取知识,以预测未来用户的购买和遍历行为。使用合成数据进行了仿真,结果表明该模型能够更准确地对用户行为进行建模。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Integrating purchase patterns and traversal patterns to predict HTTP requests in e-commerce sites
The success of an e-commerce (electronic commerce) site is measured in terms of the number of users visiting the site. A survey of essential qualities for a successful EC site suggests that reduced user perceived latency is the second most important quality after good site navigation quality. The most successful approach towards reducing user perceived latency has been the extraction of path traversal patterns from past users access history to predict future user traversal behavior and to prefetch the required resources. However this approach is suited for only non-EC sites where there is no purchase behavior. In this paper we describe a new approach to predict user behavior in EC sites. The core of our approach involves extracting knowledge from integrated data of purchase and path traversal patterns of past users to predict the purchase and traversal behavior of future users. Simulations were conducted using synthetic data, which showed that the proposed model produces more accurate modeling of the user behavior.
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