Explanation, Debate, Align: A Weak-to-Strong Framework for Language Model Generalization

Mehrdad Zakershahrak, Samira Ghodratnama
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Abstract

The rapid advancement of artificial intelligence systems has brought the challenge of AI alignment to the forefront of research, particularly in complex decision-making and task execution. As these systems surpass human-level performance in sophisticated problems, ensuring their alignment with human values, intentions, and ethical guidelines becomes crucial. Building on previous work in explanation generation for human-agent alignment, we address the more complex dynamics of multi-agent systems and human-AI teams. This paper introduces a novel approach to model alignment through weak-to-strong generalization in the context of language models. We present a framework where a strong model facilitates the improvement of a weaker model, bridging the gap between explanation generation and model alignment. Our method, formalized as a facilitation function, allows for the transfer of capabilities from advanced models to less capable ones without direct access to extensive training data. Our results suggest that this facilitation-based approach not only enhances model performance but also provides insights into the nature of model alignment and the potential for scalable oversight of AI systems.
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解释、辩论、对齐:从弱到强的语言模型泛化框架
人工智能系统的飞速发展将人工智能协调性的挑战推向了研究的前沿,尤其是在复杂决策和任务执行方面。随着这些系统在复杂问题上的表现超越人类水平,确保它们与人类的价值观、意图和道德准则保持一致变得至关重要。在以往为人机协调生成解释的工作基础上,我们探讨了多智能体系统和人机交互团队的更复杂动态。本文介绍了一种在语言模型背景下通过弱到强泛化实现模型对齐的新方法。我们提出了一个框架,在这个框架中,强模型有助于改进弱模型,弥补了解释生成和模型对齐之间的差距。我们的方法被形式化为一个促进函数,可以在不直接获取大量训练数据的情况下,将高级模型的能力转移到能力较弱的模型上。我们的研究结果表明,这种基于促进的方法不仅可以提高模型的性能,还可以深入了解模型对齐的本质以及人工智能系统可扩展监督的潜力。
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