AI RESEARCH
Graph Learning Is Suboptimal in Causal Bandits
arXiv CS.LG
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ArXi:2510.16811v3 Announce Type: replace We study regret minimization in causal bandits under causal sufficiency where the underlying causal structure is not known to the agent. Previous work has focused on identifying the reward's parents and then applying classic bandit methods to them, or jointly learning the parents while minimizing regret. We investigate whether such strategies are optimal. Somewhat counterintuitively, our results show that learning the parent set is suboptimal.