CLAILGMar 30, 2023

Self-Refine: Iterative Refinement with Self-Feedback

AI2CMU
arXiv:2303.17651v23638 citationsh-index: 64
Originality Incremental advance
AI Analysis

This addresses the need for better output quality in LLMs for various applications, offering a simple, incremental improvement over one-step generation.

The paper tackles the problem of improving large language model outputs by introducing Self-Refine, an iterative self-feedback method that enhances performance by ~20% on average across 7 tasks without additional training.

Like humans, large language models (LLMs) do not always generate the best output on their first try. Motivated by how humans refine their written text, we introduce Self-Refine, an approach for improving initial outputs from LLMs through iterative feedback and refinement. The main idea is to generate an initial output using an LLMs; then, the same LLMs provides feedback for its output and uses it to refine itself, iteratively. Self-Refine does not require any supervised training data, additional training, or reinforcement learning, and instead uses a single LLM as the generator, refiner, and feedback provider. We evaluate Self-Refine across 7 diverse tasks, ranging from dialog response generation to mathematical reasoning, using state-of-the-art (GPT-3.5, ChatGPT, and GPT-4) LLMs. Across all evaluated tasks, outputs generated with Self-Refine are preferred by humans and automatic metrics over those generated with the same LLM using conventional one-step generation, improving by ~20% absolute on average in task performance. Our work demonstrates that even state-of-the-art LLMs like GPT-4 can be further improved at test time using our simple, standalone approach.

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