The document summarizes research on item-based collaborative filtering recommendation algorithms. It analyzes techniques for computing item-item similarities and generating recommendations from the similarities. Experimental results show that item-based collaborative filtering provides better quality recommendations than user-based approaches, especially for sparse datasets. The regression-based prediction computation technique outperforms the weighted sum approach.