CLLGMay 23, 2025

GIM: Improved Interpretability for Large Language Models

arXiv:2505.17630v32 citationsh-index: 28Has Code
Originality Incremental advance
AI Analysis

This addresses the need for trustworthy AI by enhancing interpretability for LLM users, though it is incremental as it builds on prior work on self-repair.

The paper tackled the problem of self-repair in large language models, where attention mechanisms mask component importance, and introduced Gradient Interaction Modifications (GIM) to improve interpretability faithfulness across multiple models and tasks.

Ensuring faithful interpretability in large language models is imperative for trustworthy and reliable AI. A key obstacle is self-repair, a phenomenon where networks compensate for reduced signal in one component by amplifying others, masking the true importance of the ablated component. While prior work attributes self-repair to layer normalization and back-up components that compensate for ablated components, we identify a novel form occurring within the attention mechanism, where softmax redistribution conceals the influence of important attention scores. This leads traditional ablation and gradient-based methods to underestimate the significance of all components contributing to these attention scores. We introduce Gradient Interaction Modifications (GIM), a technique that accounts for self-repair during backpropagation. Extensive experiments across multiple large language models (Gemma 2B/9B, LLAMA 1B/3B/8B, Qwen 1.5B/3B) and diverse tasks demonstrate that GIM significantly improves faithfulness over existing circuit identification and feature attribution methods. Our work is a significant step toward better understanding the inner mechanisms of LLMs, which is crucial for improving them and ensuring their safety. Our code is available at https://github.com/JoakimEdin/gim.

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