Post-training reweights a pretrained model's behavior distribution either within its existing accessible support (elicitation) or by expanding that support (creation), with both SFT and RL acting as free-energy minimization under different signals.
& Li, Y.ARGS: Alignment as Reward-Guided SearchinThe Twelfth International Confer- ence on Learning Representations(2024).https://openreview.net/forum?id=shgx0eqdw6
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On Distinguishing Capability Elicitation from Capability Creation in Post-Training: A Free-Energy Perspective
Post-training reweights a pretrained model's behavior distribution either within its existing accessible support (elicitation) or by expanding that support (creation), with both SFT and RL acting as free-energy minimization under different signals.