HoT: Highlighted Chain of Thought for Referencing Supporting Facts from Inputs
Abstract
An Achilles heel of Large Language Models (LLMs) is their tendency to hallucinate non-factual statements. A response mixed of factual and non-factual statements poses a challenge for humans to verify and accurately base their decisions on. To combat this problem, we propose Highlighted Chain-of-Thought Prompting (HoT), a technique for prompting LLMs to generate responses with XML tags that ground facts to those provided in the query. That is, given an input question, LLMs would first re-format the question to add XML tags highlighting key facts, and then, generate a response with highlights over the facts referenced from the input. Interestingly, in few-shot settings, HoT outperforms vanilla chain of thought prompting (CoT) on a wide range of 17 tasks from arithmetic, reading comprehension to logical reasoning. When asking humans to verify LLM responses, highlights help time-limited participants to more accurately and efficiently recognize when LLMs are correct. Yet, surprisingly, when LLMs are wrong, HoTs tend to make users believe that an answer is correct.
Community
Modern LLMs can bold, italicize or underline their text. Why not highlight as well? We propose Highlighted Chain of Thought (HoT), a technique for prompting LLMs to generate highlights around their responses that links specific information from the user query to the LLM response. This method improves user experiences and improves answer accuracy when compared to vanilla Chain of Thought prompting.
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