CLAIDec 20, 2022

Self-Instruct: Aligning Language Models with Self-Generated Instructions

AI2UW
arXiv:2212.10560v23288 citationsh-index: 114Has Code
Originality Highly original
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This addresses the bottleneck of data scarcity for researchers and practitioners in AI, enabling more efficient alignment of language models without extensive human annotation.

The paper tackles the problem of limited human-written instruction data for aligning language models by introducing Self-Instruct, a framework that uses self-generated instructions to improve instruction-following capabilities, resulting in a 33% absolute improvement on Super-NaturalInstructions and performance close to models trained with human annotations.

Large "instruction-tuned" language models (i.e., finetuned to respond to instructions) have demonstrated a remarkable ability to generalize zero-shot to new tasks. Nevertheless, they depend heavily on human-written instruction data that is often limited in quantity, diversity, and creativity, therefore hindering the generality of the tuned model. We introduce Self-Instruct, a framework for improving the instruction-following capabilities of pretrained language models by bootstrapping off their own generations. Our pipeline generates instructions, input, and output samples from a language model, then filters invalid or similar ones before using them to finetune the original model. Applying our method to the vanilla GPT3, we demonstrate a 33% absolute improvement over the original model on Super-NaturalInstructions, on par with the performance of InstructGPT-001, which was trained with private user data and human annotations. For further evaluation, we curate a set of expert-written instructions for novel tasks, and show through human evaluation that tuning GPT3 with Self-Instruct outperforms using existing public instruction datasets by a large margin, leaving only a 5% absolute gap behind InstructGPT-001. Self-Instruct provides an almost annotation-free method for aligning pre-trained language models with instructions, and we release our large synthetic dataset to facilitate future studies on instruction tuning. Our code and data are available at https://github.com/yizhongw/self-instruct.

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