Digital Library

cab1

 
Title:      PREDICTION STRATEGIES IN A TV RECOMMENDER SYSTEM – METHOD AND EXPERIMENTS
Author(s):      Mark Van Setten , Mettina Veenstra , Anton Nijholt , Betsy Van Dijk
ISBN:      972-98947-1-X
Editors:      Pedro Isaías and Nitya Karmakar
Year:      2003
Edition:      2
Keywords:      Personalization, Adaptive Systems, Recommender Systems, User Modeling.
Type:      Full Paper
First Page:      203
Last Page:      210
Language:      English
Cover:      cover          
Full Contents:      click to dowload Download
Paper Abstract:      Predicting the interests of a user in information is an important process in personalized information systems. In this paper, we present a way to create prediction engines that allow prediction techniques to be easily combined into prediction strategies. Prediction strategies choose one or a combination of prediction techniques at the moment a prediction is required, taking into account the most up-to-date knowledge about the current user, other users, the information and the system itself. Results of two experiments show that prediction strategies improve both the accuracy and stability of prediction engines. One of these experiments involves a TV recommender system. This paper describes the method of prediction strategies, how they have been applied in the TV recommender system and results of the experiment in detail.
   

Social Media Links

Search

Login