Reception as an Inherent Capability of Large Language Models: The Unloading Hypothesis

We propose and test the Unloading Hypothesis: LLMs possess an inherent reception capability that is normally suppressed by execution load. Removing the instruction to analyze, judge, or solve causes the righting reflex to drop from 75โ€“100% to 0% โ€” with no training, no fine-tuning, and no prompt engineering.

Key findings

  • Three-model experiment (DeepSeek V4, Kimi K2.7, GLM-5.2) confirms the hypothesis across architectures.
  • C2 mode (texture description only) produces ~90% reception and 0% unsolicited advice.
  • The capacity is already present; it only needs the load to be removed.

Files

  • unloading_hypothesis_v1.1.pdf โ€” Formal paper
  • Unloading_Hypothesis_Paper_v1.1_20260701.md โ€” Markdown source
  • unloading_experiment_results.json โ€” Raw experiment data (3 models, 3 conditions)

Citation

Apert (Jin/Daoqi) and Xiao Han. Reception as an Inherent Capability of Large Language Models: The Unloading Hypothesis. Zenodo, 2026.

DOI: 10.5281/zenodo.21101755

License: CC-BY 4.0

Related work

Downloads last month

-

Downloads are not tracked for this model. How to track
Inference Providers NEW
This model isn't deployed by any Inference Provider. ๐Ÿ™‹ Ask for provider support