Attribution-Guided Model Rectification of Unreliable Neural Network Behaviors
arXiv cs.AI / 3/18/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The paper addresses unreliable neural network behaviors caused by non-robust features and the high cost of data cleaning and retraining.
- It introduces rank-one model editing with attribution-guided rectification to locate and correct misbehaviors while preserving overall performance.
- It identifies a bottleneck from heterogeneous editability across layers and proposes attribution-guided layer localization to quantify and target the key layer.
- It demonstrates effectiveness on cases like neural Trojans, spurious correlations, and feature leakage, achieving the editing objective with as few as a single cleansed sample.
Related Articles

The programming passion is melting
Dev.to

Maximize Developer Revenue with Monetzly's Innovative API for AI Conversations
Dev.to
Co-Activation Pattern Detection for Prompt Injection: A Mechanistic Interpretability Approach Using Sparse Autoencoders
Reddit r/LocalLLaMA

How to Train Custom Language Models: Fine-Tuning vs Training From Scratch (2026)
Dev.to

KoboldCpp 1.110 - 3 YR Anniversary Edition, native music gen, qwen3tts voice cloning and more
Reddit r/LocalLLaMA