Context Awareness in the Travel Companion of the Shift2Rail Initiative

06/26/2021
by   Alireza Javadian Sabet, et al.
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Providing personalized offers, and services in general, for the users of a system requires perceiving the context in which the users’ preferences are rooted. In this work, we introduce the use of an already known model and methodology–based on the so-called Context Dimension Tree–along with a conceptual architecture to build a recommender system that offers personalized services for travelers. The research is performed in the frame of the Shift2Rail initiative as part of the Innovation Programme 4 of EU Horizon 2020.

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