首页> 外文会议>International Conference on User Modeling(UM 2007); 20070625-29; Corfu(GR) >Web Customer Modeling for Automated Session Prioritization on High Traffic Sites
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Web Customer Modeling for Automated Session Prioritization on High Traffic Sites

机译:用于高流量站点上自动会话优先级的Web客户建模

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摘要

In the Web environment, user identification is becoming a major challenge for admission control systems on high traffic sites. When a web server is overloaded there is a significant loss of throughput when we compare finished sessions and the number of responses per second; longer sessions are usually the ones ending in sales but also the most sensitive to load failures. Session-based admission control systems maintain a high QoS for a limited number of sessions, but does not maximize revenue as it treats all non-logged sessions the same. We present a novel method for learning to assign priorities to sessions according to the revenue that will generate. For this, we use traditional machine leaxning techniques and Markov-chain models. We are able to train a system to estimate the probability of the user's purchasing intentions according to its early navigation clicks and other static information. The predictions can be used by admission control systems to prioritize sessions or deny them if no resources are available, thus improving sales throughput per unit of time for a given infrastructure. We test our approach on access logs obtained from a high-traffic online travel agency, with promising results.
机译:在Web环境中,用户识别正成为高流量站点上的准入控制系统的主要挑战。当Web服务器过载时,当我们比较完成的会话和每秒的响应数时,吞吐量会损失很多;较长的会话通常是销售结束的会话,但对负载故障最敏感。基于会话的准入控制系统可在有限数量的会话中保持较高的QoS,但由于将所有未记录的会话均视为相同,因此无法最大化收益。我们提出了一种新颖的方法,用于学习根据将产生的收入为会话分配优先级。为此,我们使用传统的机器学习技术和马尔可夫链模型。我们能够训练一个系统,根据其早期的导航点击次数和其他静态信息来估算用户的购买意愿。准入控制系统可以使用这些预测来确定会话的优先级,或者在没有可用资源的情况下拒绝这些预测,从而提高给定基础架构每单位时间的销售吞吐量。我们对从高流量在线旅行社获取的访问日志进行了测试,结果令人满意。

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