AI Safety
Emotional gradients for safer models, safer decisions, and fewer false positives
Most AI safety systems still rely on a binary collapse: safe vs unsafe, healthy vs risky, acceptable vs harmful. Human emotional reality does not operate in binaries. It operates on gradients, and those gradients change with nervous system state.
TEG-Blue is a structured, trauma-informed framework that makes those gradients visible, operational, and computationally legible, so AI systems can reason about emotional content with more accuracy and less harm.
Why binary safety fails in real life language
A single sentence can represent multiple realities.
Example:
“I can’t do this anymore.”
A binary classifier tends to treat that as one thing. A gradient approach can distinguish at least four different patterns:
Without gradients, systems either:
What TEG-Blue contributes to AI safety
TEG-Blue provides a gradient-based measurement layer and a theoretical architecture for why these patterns exist and how they shift under stress.
1) A measurement model that is not personality-based
The Four-Mode Gradient maps observable regulatory patterns: Connection, Protection, Control, Domination. These are states, not types.
2) Structured schemas for machine use
A proposed schema layer translates emotional pattern logic into formats AI systems can consume, including gradient classifications and consistent terminology.
3) Safety that does not punish the user for being human
The goal is fewer false positives, fewer harmful interventions, and better separation of:
Where this applies
What we are building next
We are developing:
Collaborate
We welcome collaboration from AI safety researchers, NLP researchers, alignment teams, and evaluators who want to work on bounded tasks.
Useful profiles:
If you want to contribute, start here: teg-blue.org/start-here, then see teg-blue.org/collaborate.
Research principle
We do not treat emotions as noise.
We treat them as data about safety, threat, belonging, and meaning, and we build tools that can handle that data without flattening it into binaries.