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HoT: Highlighted Chain of Thought for Referencing Supporting Facts from Inputs Episode 632

HoT: Highlighted Chain of Thought for Referencing Supporting Facts from Inputs

· 24:25

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🤗 Upvotes: 27 | cs.CL, cs.HC

Authors:
Tin Nguyen, Logan Bolton, Mohammad Reza Taesiri, Anh Totti Nguyen

Title:
HoT: Highlighted Chain of Thought for Referencing Supporting Facts from Inputs

Arxiv:
http://arxiv.org/abs/2503.02003v2

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.


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