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Relational Markov Models and their Application to Adaptive Web Navigation

机译:关系马尔可夫模型及其在自适应Web导航中的应用

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Relational Markov models (RMMs) are a generalization of Markov models where states can be of different types, with each type described by a different set of variables. The domain of each variable can be hierarchically structured, and shrinkage is carried out over the cross product of these hierarchies. RMMs make effective learning possible in domains with very large and heterogeneous state spaces, given only sparse data. We apply them to modeling the behavior of web site users, improving prediction in our PROTEUS architecture for personalizing web sites. We present experiments on an e-commerce and an academic web site showing that RMMs are substantially more accurate than alternative methods, and make good predictions even when applied to previously-unvisited parts of the site.
机译:关系马尔可夫模型(RMM)是马尔可夫模型的概括,其中状态可以是不同的类型,每种类型由一组不同的变量描述。可以对每个变量的域进行层次结构化,并在这些层次结构的叉积上进行收缩。仅提供稀疏数据,RMM即可在具有非常大且异构状态空间的域中进行有效的学习。我们将它们应用于网站用户行为的建模,从而改善了PROTEUS架构中用于个性化网站的预测。我们在电子商务和一个学术网站上进行的实验表明,RMM比其他方法要准确得多,即使将RMM应用于站点的先前未访问部分,也可以做出良好的预测。

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