AI Model Modulation with Logits Redistribution
arXiv cs.AI / 3/16/2026
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Key Points
- AIM is a new model modulation paradigm that enables a single model to exhibit diverse behaviors to meet varying owner and user requirements.
- It introduces two modulation modes: utility modulation for dynamic output quality control and focus modulation for steering which input features the model attends to.
- The approach uses a logits redistribution strategy that is training data-agnostic and retraining-free, grounded in the statistical properties of logits ordering via joint distributions.
- Evaluations demonstrate AIM’s practicality across image classification, semantic segmentation, and text generation, with support for architectures like ResNet, SegFormer, and Llama.
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