AI RESEARCH
Robust Reward Modeling for Large Language Models via Causal Decomposition
arXiv CS.CL
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ArXi:2604.13833v1 Announce Type: new Reward models are central to aligning large language models, yet they often overfit to spurious cues such as response length and overly agreeable tone. Most prior work weakens these cues directly by penalizing or controlling specific artifacts, but it does not explicitly encourage the model to ground preferences in the prompt's intent. We learn a decoder that maps a candidate answer to the latent intent embedding of the input. The reconstruction error is used as a signal to regularize the reward model.