Learned but Not Expressed: Capability-Expression Dissociation in Large Language Models
arXiv cs.CL / 3/20/2026
💬 OpinionIdeas & Deep AnalysisModels & Research
Key Points
- The study demonstrates that LLMs can reconstruct and trace learned content from training data under specific elicitation, but this capability does not appear in standard generation contexts.
- In an empirical analysis of 3 models, 10 task scenarios, and both creative narrative and practical advisory contexts, the authors observed zero instances of non-causal, non-implementable solution frames in generated outputs.
- The results show a dissociation between learned capability and expressed output, suggesting that task-conditioned generation policies can suppress learned content even when reconstruction is possible.
- These findings have implications for understanding generation dynamics, controlling output distributions, and delineating the behavioral boundaries of modern LLMs.
Related Articles
Automating the Chase: AI for Festival Vendor Compliance
Dev.to
MCP Skills vs MCP Tools: The Right Way to Configure Your Server
Dev.to
500 AI Prompts Every Content Creator Needs in 2026 (20 Free Samples)
Dev.to
Building a Game for My Daughter with AI — Part 1: What If She Could Build It Too?
Dev.to

Math needs thinking time, everyday knowledge needs memory, and a new Transformer architecture aims to deliver both
THE DECODER