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arxiv:2307.12950

RLCD: Reinforcement Learning from Contrast Distillation for Language Model Alignment

Published on Jul 24, 2023
· Submitted by
AK
on Jul 25, 2023
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Abstract

Reinforcement Learning from Contrast Distillation (RLCD) aligns language models to natural language principles using simulated preference pairs without human feedback, outperforming existing methods across various alignment tasks.

We propose Reinforcement Learning from Contrast Distillation (RLCD), a method for aligning language models to follow natural language principles without using human feedback. RLCD trains a preference model using simulated preference pairs that contain both a high-quality and low-quality example, generated using contrasting positive and negative prompts. The preference model is then used to improve a base unaligned language model via reinforcement learning. Empirically, RLCD outperforms RLAIF (Bai et al., 2022b) and context distillation (Huang et al., 2022) baselines across three diverse alignment tasks--harmlessness, helpfulness, and story outline generation--and on both 7B and 30B model scales for preference data simulation.

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