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A Mechanistic Analysis of a Transformer Trained on a Symbolic Multi-Step Reasoning Task

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arxiv 2402.11917 v3 pith:OIDLNEQU submitted 2024-02-19 cs.LG

A Mechanistic Analysis of a Transformer Trained on a Symbolic Multi-Step Reasoning Task

classification cs.LG
keywords mechanismsreasoningtasktransformersanalysisbenchmarksinsightsinternal
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Transformers demonstrate impressive performance on a range of reasoning benchmarks. To evaluate the degree to which these abilities are a result of actual reasoning, existing work has focused on developing sophisticated benchmarks for behavioral studies. However, these studies do not provide insights into the internal mechanisms driving the observed capabilities. To improve our understanding of the internal mechanisms of transformers, we present a comprehensive mechanistic analysis of a transformer trained on a synthetic reasoning task. We identify a set of interpretable mechanisms the model uses to solve the task, and validate our findings using correlational and causal evidence. Our results suggest that it implements a depth-bounded recurrent mechanisms that operates in parallel and stores intermediate results in selected token positions. We anticipate that the motifs we identified in our synthetic setting can provide valuable insights into the broader operating principles of transformers and thus provide a basis for understanding more complex models.

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Cited by 3 Pith papers

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    Supervised fine-tuning lets LLMs linearly encode action validity and state predicates, with broader state-space coverage during training improving world-model recovery.

  3. Mechanistic Interpretability for Neural Networks: Circuits, Sparse Features and Symbolic Reasoning

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    A scoping review surveying circuit analysis, sparse autoencoders, activation steering, and neurosymbolic frameworks for interpreting and controlling Transformer-based neural networks.