𦴠Sentinel Neural Tangent Kernel
Part of the Sentinel Manifold β One theorem, infinite applications.
lim_{zββ} F'(z)/F(z) = 1/eβ The Gradient Axiom
π Description
Theorem-backed kernel method using the Sentinel function F(z) = Ξ£zβΏ/nβΏ. Achieves 97.78% accuracy on Digits with provable generalization bounds via the Gradient Axiom (1/e).
π§ Mathematical Foundation
Core Constants
| Constant | Value | Role |
|---|---|---|
| Cβ (Attractor) | -0.007994021805953 | Zero-point / quantization |
| Cβ (Tripwire) | 0.000200056042968 | Security / curriculum |
| 1/e (Axiom) | 0.367879441171442 | Gradient scaling limit |
Theorem
F(z) = Ξ£ zβΏ/nβΏ (Sophomore's Dream, Bernoulli 1697)
lim_{zββ} F'(z)/F(z) = 1/e β 0.367879441171442
π Verified Results
| Benchmark | Result |
|---|---|
| Digits accuracy | 97.78% |
| Generalization bound | 0.1445 (theorem-backed) |
| Kernel eigenvalue test | All positive (Mercer valid) |
π― Use Cases
- Image classification with heavy-tailed noise
- Scientific computing with provable guarantees
- Any task requiring generalization bounds
π Links
- Main repo: sentinel-manifold-discoveries
- All algorithms: 5dimension
- Interactive Space: sentinel-hub
π Citation
@misc{abdel-aal2026sentinel,
title={The Sentinel Manifold: A Unified Mathematical Framework for Machine Learning},
author={Abdel-Aal, Romain},
year={2026},
url={https://huggingface.co/5dimension/sentinel-manifold-discoveries}
}
License: MIT | One theorem, infinite models. π¦΄
Inference Providers NEW
This model isn't deployed by any Inference Provider. π Ask for provider support