Mantic Thinking:A 4-layer anomaly detection framework with cross-domain transfer

1 pointsposted 13 hours ago
by ColeW

1 Comments

ColeW

13 hours ago

I built mantic-thinking for consistent multi-factor analysis. 14 tools (7 friction, 7 emergence), immutable kernel: M = (sum(W * L * I)) * f(t) / k_n.

  Ran 5 tests. Key findings:

  The "critical window" pattern

  Friction M > 0.7 AND emergence M > 0.7 = unstable equilibrium. High risk + high alignment for action. Neither tool alone catches this. Tested on Tesla: regime c
  onflict (0.715) + confluence window (0.810) → "small position, tight stops."

  Cross-domain transfer works

  86% pattern consistency across healthcare, finance, cyber, climate, legal, military, social. Same mental model, different domain weights.

  Temporal kernels enable timing

  8 kernels model evolution. Exponential decay = "monitor." S-curve = "act at inflection." Makes "when to act" explicit.

  LLM integration is load-bearing

  Framework needs LLM front (NL → parameters) and back (M-scores → recommendations). Tested cyber attribution: extracted params, calculated, synthesized "attribut
  ion gap—isolate server, 48-hour window."

  Architecture holds up

  Zero-variation core kernel. Graceful NaN handling. 0 crashes. Boundary conditions handled.