How Transformers Learn Causal Structure with Gradient Descent
February 22, 2024 ยท Declared Dead ยท ๐ International Conference on Machine Learning
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Authors
Eshaan Nichani, Alex Damian, Jason D. Lee
arXiv ID
2402.14735
Category
cs.LG: Machine Learning
Cross-listed
cs.IT,
stat.ML
Citations
102
Venue
International Conference on Machine Learning
Last Checked
3 months ago
Abstract
The incredible success of transformers on sequence modeling tasks can be largely attributed to the self-attention mechanism, which allows information to be transferred between different parts of a sequence. Self-attention allows transformers to encode causal structure which makes them particularly suitable for sequence modeling. However, the process by which transformers learn such causal structure via gradient-based training algorithms remains poorly understood. To better understand this process, we introduce an in-context learning task that requires learning latent causal structure. We prove that gradient descent on a simplified two-layer transformer learns to solve this task by encoding the latent causal graph in the first attention layer. The key insight of our proof is that the gradient of the attention matrix encodes the mutual information between tokens. As a consequence of the data processing inequality, the largest entries of this gradient correspond to edges in the latent causal graph. As a special case, when the sequences are generated from in-context Markov chains, we prove that transformers learn an induction head (Olsson et al., 2022). We confirm our theoretical findings by showing that transformers trained on our in-context learning task are able to recover a wide variety of causal structures.
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