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Self-Convinced Prompting: Few-Shot Question Answering with Repeated Introspection

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arxiv 2310.05035 v2 pith:GDDQXPGS submitted 2023-10-08 cs.CL cs.AI

Self-Convinced Prompting: Few-Shot Question Answering with Repeated Introspection

classification cs.CL cs.AI
keywords languageframeworkllmsmodelsperformancetextitcomplexfew-shot
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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While large language models (LLMs) such as ChatGPT and PaLM have demonstrated remarkable performance in various language understanding and generation tasks, their capabilities in complex reasoning and intricate knowledge utilization still fall short of human-level proficiency. Recent studies have established the effectiveness of prompts in steering LLMs towards generating desired outputs. Building on these insights, we introduce a novel framework that harnesses the potential of large-scale pre-trained language models, to iteratively enhance performance of the LLMs. Our framework incorporates three components: \textit{Normal CoT}, a \textit{Convincer}, and an \textit{Answerer}. It processes the output of a typical few-shot chain-of-thought prompt, assesses the correctness of the response, scrutinizes the answer, refines the reasoning, and ultimately produces a new solution. Experimental results on the 7 datasets of miscellaneous problems validate the efficacy of the Self-Convince framework, achieving substantial improvements compared to the baselines. This study contributes to the burgeoning body of research focused on integrating pre-trained language models with tailored prompts and iterative refinement processes to augment their performance in complex tasks.

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