Recommendation Systems based on Collaborative Filtering: New approaches - Abdellah El Fazziki,Mohammed Benbrahim
-30% with code BOOKS
Shipping in 12-18 days
30-day return policy
Collaborative filtering (CF) is a popular recommendation approach that has been extensively researched over the last two decades, resulting in a diverse set of algorithms and a large collection of tools to evaluate their performance. This research proposes a new recommendation approach to deal with the problems of grey sheep and data sparsity, with the aim of improving prediction accuracy by inferring new u ... Full description
You May Also Like
Description
Collaborative filtering (CF) is a popular recommendation approach that has been extensively researched over the last two decades, resulting in a diverse set of algorithms and a large collection of tools to evaluate their performance. This research proposes a new recommendation approach to deal with the problems of grey sheep and data sparsity, with the aim of improving prediction accuracy by inferring new users from existing users in datasets. This transformation creates users with preferences opposite to those of real users, thereby increasing the number of users and solving the two problems mentioned. The performance of this approach has been evaluated using two datasets, MovieLens and FilmTrust. Overall, this book contributes to the development of better recommender systems capable of overcoming the challenges of data overload and improving user experience.
More Information
| Author | Abdellah El Fazziki, Mohammed Benbrahim |
|---|---|
| Publisher | Our Knowledge Publishing |
| Release year | 2024 |
| Cover type | Softcover |
| EAN | 9786207429196 |