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Information science / Information / Recommender systems / Computing / Collective intelligence / Information systems / Humancomputer interaction / Social information processing / Collaborative filtering / Cold start / Preference elicitation / Personalization
Date: 2009-12-22 08:26:43
Information science
Information
Recommender systems
Computing
Collective intelligence
Information systems
Humancomputer interaction
Social information processing
Collaborative filtering
Cold start
Preference elicitation
Personalization

Digital Library Curriculum Development Module 7-c: Recommender Systems (Draft, Module title: Recommender Systems 2. Module Scope: This module addresses the concepts underlying Recommender Systems, along with

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