ABSTRACT
The present study compares an adaptive simulated cellular-phone based recommender system to a non-adaptive one, in order to evaluate user preferences with respect to system adaptivity. The results show that users prefer the adaptive system over the non adaptive one even after minimal interaction with the system.
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Index Terms
- Don't miss-r --: recommending restaurants through an adaptive mobile system
Recommendations
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