AI RESEARCH
Target-Aligned Bellman Backup for Cross-domain Offline Reinforcement Learning
arXiv CS.LG
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ArXi:2605.22376v1 Announce Type: new Cross-domain offline reinforcement learning (CDRL) aims to improve policy learning in a target domain by leveraging data collected from a source domain. Existing works typically assess the transferability of source-domain data by measuring its similarity to target-domain transitions, and implicitly perform transition-level selection. Transitions that are considered similar are assigned higher weights or rewards, while dissimilar ones are down-weighted. However, transition-level similarity does not necessarily imply consistency in long-term returns.