LGFeb 24

Transcoder Adapters for Reasoning-Model Diffing

arXiv:2602.20904v1h-index: 6
Originality Incremental advance
AI Analysis

This provides insight into reasoning training for AI researchers, though it is incremental as it builds on existing fine-tuning and interpretability methods.

The paper tackled the problem of understanding how reasoning training affects a model's internal mechanisms by introducing transcoder adapters to approximate differences in MLP computation before and after fine-tuning, showing that these adapters recover 50-90% of accuracy gains and identify sparse features linked to specific behaviors like hesitation tokens.

While reasoning models are increasingly ubiquitous, the effects of reasoning training on a model's internal mechanisms remain poorly understood. In this work, we introduce transcoder adapters, a technique for learning an interpretable approximation of the difference in MLP computation before and after fine-tuning. We apply transcoder adapters to characterize the differences between Qwen2.5-Math-7B and its reasoning-distilled variant, DeepSeek-R1-Distill-Qwen-7B. Learned adapters are faithful to the target model's internal computation and next-token predictions. When evaluated on reasoning benchmarks, adapters match the reasoning model's response lengths and typically recover 50-90% of the accuracy gains from reasoning fine-tuning. Adapter features are sparsely activating and interpretable. When examining adapter features, we find that only ~8% have activating examples directly related to reasoning behaviors. We deeply study one such behavior -- the production of hesitation tokens (e.g., "wait"). Using attribution graphs, we trace hesitation to only ~2.4% of adapter features (5.6k total) performing one of two functions. These features are necessary and sufficient for producing hesitation tokens; removing them reduces response length, often without affecting accuracy. Overall, our results provide insight into reasoning training and suggest transcoder adapters may be useful for studying fine-tuning more broadly.

Foundations

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