Chapter 5 Conclusion and Future Work
5.2 Future Work
In the future, we can switch to collaborative filtering recommendation to replace original semantic content-based recommendation. Collaborative filtering recommen-dation has different recommenrecommen-dation philosophy to the content-based recommenda-tion, which may have a better performance than content-based one.
Also, we can add context-aware into semantic content-based recommendation part. In our lecture review, we surveyed semantic content-based combined context-aware would have better performance. With context-aware, content-based recommendation can do better query expansion, which is proved to enhance recommendation perfor-mance. The two proposals can be implemented into the hybrid algorithm and testified their performances
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