Many recent studies have found evidence for emergent reasoning capabilities in large language models, but debate persists concerning the robustness of these capabilities, and the extent to which they depend on structured reasoning mechanisms. To shed light on these issues, we perform a comprehensive study of the internal mechanisms that support abstract rule induction in an open-source language model (Llama3-70B). We identify an emergent symbolic architecture that implements abstract reasoning via a series of three computations. In early layers, symbol abstraction heads convert input tokens to abstract variables based on the relations between those tokens. In intermediate layers, symbolic induction heads perform sequence induction over these abstract variables. Finally, in later layers, retrieval heads predict the next token by retrieving the value associated with the predicted abstract variable. These results point toward a resolution of the longstanding debate between symbolic and neural network approaches, suggesting that emergent reasoning in neural networks depends on the emergence of symbolic mechanisms.
Emergent Symbolic Mechanisms Support Abstract Reasoning in Large Language Models
Emergent reasoning in large language models is supported by a symbolic architecture involving symbol abstraction, sequence induction, and retrieval mechanisms.
- Year
- 2025
- Venue
- arXiv 2025
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- 6
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- Abstract onlyARXIV-DEFAULT
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- arxiv.org/abs/2502.20332ARXIV-DEFAULT
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