Discovering Decoupled Functional Modules in Large Language Models
arXiv cs.LG / 3/19/2026
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Key Points
- The paper proposes the ULCMOD framework, an unsupervised cross-layer module discovery method that disentangles the entire LLM neuron set into functional modules and associates modules with topics of input samples.
- It introduces a novel objective function and an efficient IterD (Iterative Decoupling) algorithm to perform this discovery.
- Extensive experiments show the discovered modules are disentangled, semantically meaningful, and exhibit interpretable specializations with clear spatial and hierarchical organization within the model.
- The work aims to advance interpretability and trustworthiness of LLMs by providing a new tool for analyzing functional modularity.
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