Prompt Sketching for Large Language Models
This addresses inefficiencies in prompting strategies for LLM users, offering a more controlled generation process, though it is an incremental improvement over existing methods.
The paper tackles the problem of disconnected and wordy intermediate responses in sequential prompting for large language models by proposing prompt sketching, a new paradigm where the model predicts values for multiple variables in a template, leading to better control and results. In experiments, it outperforms existing sequential prompting schemes on 7 out of 8 LLM benchmarking tasks in a zero-shot setting.
Many recent prompting strategies for large language models (LLMs) query the model multiple times sequentially -- first to produce intermediate results and then the final answer. However, using these methods, both decoder and model are unaware of potential follow-up prompts, leading to disconnected and undesirably wordy intermediate responses. In this work, we address this issue by proposing prompt sketching, a new prompting paradigm in which an LLM does not only respond by completing a prompt, but by predicting values for multiple variables in a template. This way, sketching grants users more control over the generation process, e.g., by providing a reasoning framework via intermediate instructions, leading to better overall results. The key idea enabling sketching with existing, autoregressive models is to adapt the decoding procedure to also score follow-up instructions during text generation, thus optimizing overall template likelihood in inference. Our experiments show that in a zero-shot setting, prompt sketching outperforms existing, sequential prompting schemes such as direct asking or chain-of-thought on 7 out of 8 LLM benchmarking tasks, including state tracking, arithmetic reasoning, and general question answering. To facilitate future use, we release a number of generic, yet effective sketches applicable to many tasks, and an open source library called dclib, powering our sketch-aware decoders.