The exploitation of Recommender Systems (RS) is still a challenge, hence it is important to explore the three correlated attributes, such as restaurant, food, and service ratings. Therefore, this study provides an indepth review of these attribute ratings using the Collaborative Filtering (CF) technique. Experiments were performed with k-NN, SVD, Slope One, and Co-Clustering algorithms, while RMSE, MSE, MAE, and FCP were used as evaluation metrics. The results showed that the service restaurant rating predictions produced the best average MSE and RMSE accuracy in 5 and 10fold cross-validation. Furthermore, the best hyperparameter of algorithms using Grid Search was achieved in restaurant rating prediction. In conclusion, SVD surpasses other algorithms in MSE and RMSE for all scenarios.