AI RESEARCH
Meritocratic Fairness in Budgeted Combinatorial Multi-armed Bandits via Shapley Values
arXiv CS.AI
•
ArXi:2605.00762v1 Announce Type: cross We propose a new framework for meritocratic fairness in budgeted combinatorial multi-armed bandits with full-bandit feedback (BCMAB-FBF). Unlike semi-bandit feedback, the contribution of individual arms is not received in full-bandit feedback, making the setting significantly challenging. To compute arm contributions in BCMAB-FBF, we first extend the Shapley value, a classical solution concept from cooperative game theory, to the $K$-Shapley value, which captures the marginal contribution of an agent restricted to a set of size at most $K.