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Tree Prompting: Efficient Task Adaptation without Fine-Tuning

Tree Prompting enhances the accuracy of smaller language models by chaining prompt-based decisions, matching or surpassing gradient-based fine-tuning on classification tasks.

Year
2023
Venue
arXiv 2023
Authors
5
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arxiv.org/abs/2310.14034ARXIV-DEFAULT
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Abstract

Prompting language models (LMs) is the main interface for applying them to new tasks. However, for smaller LMs, prompting provides low accuracy compared to gradient-based finetuning. Tree Prompting is an approach to prompting which builds a decision tree of prompts, linking multiple LM calls together to solve a task. At inference time, each call to the LM is determined by efficiently routing the outcome of the previous call using the tree. Experiments on classification datasets show that Tree Prompting improves accuracy over competing methods and is competitive with fine-tuning. We also show that variants of Tree Prompting allow inspection of a model's decision-making process.

Authors

5