Show pageOld revisionsBacklinksBack to top This page is read only. You can view the source, but not change it. Ask your administrator if you think this is wrong. # Basic Recommender Systems {{tag>Basic Recommender Systems}} ## Learning Objectives 1. Basic Concepts - Distinguish the different input data of a Recommender System - Classify the different families of Recommender System - Distinguish between implicit and explicit user feedback - Express the Global Effects formul 2. Requirements and Evaluation - Decide the most appropriate evaluation metric for the recommendation task - Decide the most appropriate splitting strategy - Distinguish between error and accuracy metrics - Discuss the importance of beyond accuracy metrics 3. Content-Based filtering - Define a content-based recommender system - Describe how to improve the different similarity functions - Discuss the importance of weighting the attributes - Describe advantages and disadvantages of Content-Based Filtering vs Collaborative Filtering 4. Collaborative Filtering - Select the most appropriate similarity function - Describe the difference between item-based and user-based models - Describe association rules based recommenders - Decide the most appropriate approach based on implicit or explicit feedback ## Basic Concepts  ### Taxonomy of Recommender Systems - Algorithems - Non-Personalized - Personalized - Content-Based Filtering ([[CBF]]) - Collaborative Filtering ([[CF]]) - User Based - Item Based - Matrix Factorization - Others (with CARS, Hybrids) - Factorization Machine - Deep Learning - Context-Aware ([[CARS]]) - Hybrids Side Information  ### Item Content Matrix ## 출처 - https://www.coursera.org/learn/basic-recommender-systems/home/welcome open/basic-recommender-systems.txt Last modified: 2024/10/05 06:15by 127.0.0.1