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1. An Introduction to Recommender Systems
2. Neighborhood-Based Collaborative Filtering
3. Model-Based Collaborative Filtering
4. Content-Based Recommender Systems
5. Knowledge-Based Recommender Systems
6. Ensemble-Based and Hybrid Recommender Systems
7. Evaluating Recommender Systems
8. Context-Sensitive Recommender Systems
9. Time-and Location-Sensitive Recommender Systems
10. Structural Recommendations in Networks
11. Social and Trust-Centric Recommender Systems
12. Attack-Resistant Recommender Systems
13.Advanced Topics in Recommender Systems
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