A Hopfieldian View-based Interpretation For Chain-of-thought Reasoning · The Large Language Model Bible Contribute to LLM-Bible

A Hopfieldian View-based Interpretation For Chain-of-thought Reasoning

Hu Lijie, Liu Liang, Yang Shu, Chen Xin, Xiao Hongru, Li Mengdi, Zhou Pan, Ali Muhammad Asif, Wang Di. Arxiv 2024

[Paper]    
Few Shot Interpretability And Explainability Prompting Tools

Chain-of-Thought (CoT) holds a significant place in augmenting the reasoning performance for large language models (LLMs). While some studies focus on improving CoT accuracy through methods like retrieval enhancement, yet a rigorous explanation for why CoT achieves such success remains unclear. In this paper, we analyze CoT methods under two different settings by asking the following questions: (1) For zero-shot CoT, why does prompting the model with “let’s think step by step” significantly impact its outputs? (2) For few-shot CoT, why does providing examples before questioning the model could substantially improve its reasoning ability? To answer these questions, we conduct a top-down explainable analysis from the Hopfieldian view and propose a Read-and-Control approach for controlling the accuracy of CoT. Through extensive experiments on seven datasets for three different tasks, we demonstrate that our framework can decipher the inner workings of CoT, provide reasoning error localization, and control to come up with the correct reasoning path.

Similar Work