A multi-level collaborative filtering method that improves recommendations
This work addresses accuracy issues in collaborative filtering for users in online recommendation systems, but appears incremental as it builds on existing methods.
The paper tackles the problem of low accuracy in collaborative filtering for recommendations by proposing a multi-level method, which is evaluated on five real datasets and shows improved recommendation quality.
Collaborative filtering is one of the most used approaches for providing recommendations in various online environments. Even though collaborative recommendation methods have been widely utilized due to their simplicity and ease of use, accuracy is still an issue. In this paper we propose a multi-level recommendation method with its main purpose being to assist users in decision making by providing recommendations of better quality. The proposed method can be applied in different online domains that use collaborative recommender systems, thus improving the overall user experience. The efficiency of the proposed method is shown by providing an extensive experimental evaluation using five real datasets and with comparisons to alternatives.