Weitere Kapitel dieses Buchs durch Wischen aufrufen
In the previous chapters, we discussed three different classes of recommendation methods. Collaborative methods use the ratings of a community of users in order to make recommendations, whereas content-based methods use the ratings of a single user in conjunction with attribute-centric item descriptions to make recommendations.
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- Ensemble-Based and Hybrid Recommender Systems
Charu C. Aggarwal
- Chapter 6
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