Title :
Evaluating Variable-Length Markov Chain Models for Analysis of User Web Navigation Sessions
Author :
Borges, Jose ; Levene, Mark
Author_Institution :
Sch. of Eng., Porto Univ.
fDate :
4/1/2007 12:00:00 AM
Abstract :
Markov models have been widely used to represent and analyze user Web navigation data. In previous work, we have proposed a method to dynamically extend the order of a Markov chain model and a complimentary method for assessing the predictive power of such a variable-length Markov chain. Herein, we review these two methods and propose a novel method for measuring the ability of a variable-length Markov model to summarize user Web navigation sessions up to a given length. Although the summarization ability of a model is important to enable the identification of user navigation patterns, the ability to make predictions is important in order to foresee the next link choice of a user after following a given trail so as, for example, to personalize a Web site. We present an extensive experimental evaluation providing strong evidence that prediction accuracy increases linearly with summarization ability
Keywords :
Internet; Markov processes; data mining; summarization ability; user Web navigation sessions; variable-length Markov chain model evaluation; Accuracy; File servers; Length measurement; Markov processes; Navigation; Power measurement; Predictive models; Scalability; Tree data structures; Web pages; Markov processes; Web mining; modeling and prediction.; navigation;
Journal_Title :
Knowledge and Data Engineering, IEEE Transactions on
DOI :
10.1109/TKDE.2007.1012