An Economic Framework for Web-based Collaborative Information Classifiers
نویسندگان
چکیده
In the information age, lters are going to play a dominant role. Isolated lters are incapable of dealing with a large number of incoming documents. Collaborative ltering creates a symbiosis of information ltering and web based technologies. However, collaboration has associated costs. Each service ooered and provided by a lter must be appropriately compensated. Here we present two economic models for collaborative information classiication. Details of these models and results of experiments performed with them are described .
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