engine: tune the default world to a soft program

DefaultConfig now describes a more realistic world: a moderately novel fake
(novelty 0.3), some ambient harm awareness (0.2), and a strong but imperfect
education program (programEffect 0.8) so educated students mostly, not always,
refuse. The headline shifts from 99/70/7 (a perfect program) to 100/83/21 out
of 120 (83/69/18 percent): no program >> random >> most-connected still holds,
targeting still wins by ~4x, but the program is no longer a perfect wall.
Golden values re-pinned in the engine and API tests; the preset base matches.
The forward-chance formula test now neutralises its baseline so it pins the
formula, not the tuned defaults.
This commit is contained in:
Justin Visser 2026-06-18 22:19:44 +02:00
parent 4ac7ba1624
commit c1201caf11
6 changed files with 27 additions and 18 deletions

View file

@ -28,9 +28,9 @@ export const deepfakeSchoolPreset: StudyPreset = {
edgesPerNode: 3,
triangleProb: 0.45,
forwardProb: 0.38,
novelty: 0,
harmAwareness: 0,
programEffect: 1,
novelty: 0.3,
harmAwareness: 0.2,
programEffect: 0.8,
numEducated: 36,
origin: 0,
graphSeed: 17,