This document provides an overview of an online conference presentation on advances in bias-aware recommendation. The presentation is divided into three sessions:
Session I covers the foundations of recommendation systems and data/algorithmic bias. It includes an introduction to recommendation principles and hands-on with recommender systems.
Session II focuses on techniques for mitigating bias, with slides on common mitigation approaches and another hands-on exercise on popularity bias.
Session III examines unfairness mitigation strategies with slides on unfairness measures and mitigation. It concludes with a hands-on activity related to provider unfairness.
The presentation aims to raise awareness of bias issues in recommendations, showcase bias mitigation techniques, and identify new directions