Beyond the Prompt in Large Language Models: Comprehension, In-Context Learning, and Chain-of-Thought
arXiv cs.CL / 3/12/2026
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Key Points
- The paper investigates how autoregressive LLMs can exactly infer the transition probabilities between tokens from prompts, explaining how they decode prompt semantics despite being trained only on next-token prediction.
- It shows that In-Context Learning improves performance by reducing prompt ambiguity and concentrating the posterior on the intended task.
- It demonstrates that Chain-of-Thought prompting activates the model's capacity for task decomposition, breaking complex problems into simpler subtasks learned during pretraining.
- It provides theoretical comparisons of error bounds to argue the statistical advantages of advanced prompt engineering techniques.
- The work advances the theoretical foundations of prompt-based capabilities and informs future prompt design and evaluation.
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