LGAIFeb 2, 2025

Representations Shape Weak-to-Strong Generalization: Theoretical Insights and Empirical Predictions

arXiv:2502.00620v48 citationsh-index: 29ICML
Originality Incremental advance
AI Analysis

This provides theoretical insights into how weak supervision affects strong models, with practical implications for guiding superhuman AI, though it is incremental in building on prior empirical work.

The paper tackles the problem of understanding weak-to-strong generalization by analyzing interactions between weak and strong models through kernels from their internal representations, showing that this approach predicts performance trends without labels in experiments on molecular predictions and NLP tasks.

Weak-to-Strong Generalization (W2SG), where a weak model supervises a stronger one, serves as an important analogy for understanding how humans might guide superhuman intelligence in the future. Promising empirical results revealed that a strong model can surpass its weak supervisor. While recent work has offered theoretical insights into this phenomenon, a clear understanding of the interactions between weak and strong models that drive W2SG remains elusive. We investigate W2SG through a theoretical lens and show that it can be characterized using kernels derived from the principal components of weak and strong models' internal representations. These kernels can be used to define a space that, at a high level, captures what the weak model is unable to learn but is learnable by the strong model. The projection of labels onto this space quantifies how much the strong model falls short of its full potential due to weak supervision. This characterization also provides insights into how certain errors in weak supervision can be corrected by the strong model, regardless of overfitting. Our theory has significant practical implications, providing a representation-based metric that predicts W2SG performance trends without requiring labels, as shown in experiments on molecular predictions with transformers and 5 NLP tasks involving 52 LLMs.

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