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On the Transformations across Reward Model, Parameter Update, and In-Context Prompt

Published 24 Jun 2024 in cs.CL and cs.AI | (2406.16377v1)

Abstract: Despite the general capabilities of pre-trained LLMs, they still need further adaptation to better serve practical applications. In this paper, we demonstrate the interchangeability of three popular and distinct adaptation tools: parameter updating, reward modeling, and in-context prompting. This interchangeability establishes a triangular framework with six transformation directions, each of which facilitates a variety of applications. Our work offers a holistic view that unifies numerous existing studies and suggests potential research directions. We envision our work as a useful roadmap for future research on LLMs.

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