LaboUr - Machine Learning for User Modeling

Traditional user modeling systems are often limited, as far as processing of observations about user behavior and handling of user model dynamics are concerned. In this paper, the LaboUr architecture for user modeling systems is discussed. It realizes user modeling as open learning process, thus overcoming the mentioned limitations.

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