Practical Compositional Fairness: Understanding Fairness in Multi-Component Recommender Systems
Xuezhi Wang, Nithum Thain, Anu Sinha, Flavien Prost, Ed H., Jilin Chen, Alex Beutel
Abstract
How can we build recommender systems to take into account fairness? Real-world recommender systems are often composed of multiple models, built by multiple teams. However, most research on fairness focuses on improving fairness in a single model. Further, recent research on classification fairness has shown that combining multiple "fair" classifiers can still result in an "unfair" classification system. This presents a significant challenge: how do we understand and improve fairness in recommender systems composed of multiple components?
Topics & Concepts
Recommender systemComputer scienceComponent (thermodynamics)Fairness measureMachine learningTelecommunicationsPhysicsThermodynamicsThroughputWirelessRecommender Systems and TechniquesAdvanced Bandit Algorithms ResearchStochastic Gradient Optimization Techniques