VC-Soup: Value-Consistency Guided Multi-Value Alignment for Large Language Models
arXiv cs.LG / 3/20/2026
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Key Points
- The paper proposes VC-soup, a data filtering and parameter merging framework to address multi-value alignment in LLMs by emphasizing value consistency across different human values.
- It introduces a value consistency metric based on the cosine similarity between the reward-gap vector of each preference pair and an all-ones vector, used to filter out low-consistency data.
- Training on the remaining, value-consistent data yields policies that better preserve linear mode connectivity.
- The approach linearly combines these value-specific policies and applies Pareto filtering across values to balance multi-value performance.
- Experimental results and theoretical analysis indicate that VC-soup mitigates value conflicts and outperforms existing multi-value alignment methods.
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