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Mining High-Quality Cases for Hypertext Prediction and Prefetching

机译:挖掘用于超文本预测和预取的高质量案例

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Case-based reasoning aims to use past experience to solve new problems. A strong requirement for its application is that extensive experience base exists that provides statistically significant justification for new applications. Such extensive experience base has been rare, limiting most CBR applications to be confined to small-scale problems involving single or few users, or even toy problems. In this work, we present an application of CBR in the domain of web document prediction and retrieval, whereby a server-side application can decide, with high accuracy and coverage, a user's next request for hypertext documents based on past requests. An application program can then use the prediction knowledge to prefetch or presend web objects to reduce latency and network load. Through this application, we demonstrate the feasibility of CBR application in the web-document retrieval context, exposing the vast possibility of using web-log files that contain document retrieval experiences from millions of users. In this framework, a CBR system is embedded within an overall web-server application. A novelty of the work is that data mining and case-based reasoning are combined in a seamless manner, allowing cases to be mined efficiently. In addition we developed techniques to allow different case bases to be combined in order to yield a overall case base with higher quality than each individual ones. We validate our work through experiments using realistic, large-scale web logs.
机译:基于案例的推理旨在利用过去的经验来解决新问题。对它的应用的强烈要求是要有广泛的经验基础,可以为新应用提供具有统计意义的合理依据。如此丰富的经验基础是罕见的,将大多数CBR应用程序限制在涉及单个或少数用户甚至玩具问题的小规模问题上。在这项工作中,我们介绍了CBR在Web文档预测和检索领域中的应用程序,其中服务器端应用程序可以根据过去的请求以高精度和高覆盖率来确定用户对超文本文档的下一个请求。然后,应用程序可以使用预测知识来预取或预先发送Web对象,以减少延迟和网络负载。通过此应用程序,我们演示了CBR应用程序在Web文档检索上下文中的可行性,从而揭示了使用包含数百万用户文档检索经验的Web日志文件的巨大可能性。在此框架中,CBR系统被嵌入整个Web服务器应用程序中。这项工作的新颖之处在于,数据挖掘和基于案例的推理可以无缝地结合在一起,从而可以高效地挖掘案例。另外,我们开发了允许将不同案例库进行组合的技术,以产生比每个案例库都更高质量的整体案例库。我们通过使用现实的大型网络日志进行的实验来验证我们的工作。

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