Predictions
Testable claims that could be wrong. What experiments are designed to test.
- P1: Backfire Regime ExistspredictionThere exist states where delivering intervention produces worse outcomes than withholding, because the intervention itself functions as an uncontrollable demand on a system that has lost capacity to process demands.
- P2: Regime ObservabilitypredictionConsumer sensors (HRV, EDA, pupillometry) combined with AI-derived conversational/behavioral signals can resolve the state distinctions the architecture requires -- at minimum, can-process vs. cannot-process.
- P3: Stabilization Without Autonomy LosspredictionState-conditioned bounded actions (state legibility, choice compression, micro-controllability tasks) reduce time-to-regulation without creating dependency or reducing long-term autonomous capacity.
- P4: Understanding Layer Adds ValuepredictionLLM-based semantic modeling of the human's values and context improves system performance beyond what sensor-plus-rules achieves alone.
- P5: Gains Persist After RemovalpredictionCapacity improvements are maintained after the system is removed; the system builds the human's own regulatory capacity rather than substituting for it.
No sections match this filter.