Published February 7, 2026
| Version v1
Journal article
Open
Predictive Augmentation for Anticipatory Cyber Defense: A Unified Framework Integrating Adversarial Machine Learning, Game-Theoretic Autonomous Defense, and Zero-Knowledge Attribution
Description
This paper presents a unified framework for anticipatory cyber defense integrating eight convergent dimensions: adversarial machine learning countermeasures, supply chain and hardware implant analysis, quantum threat transition analysis, attribution resistance with deepfake forensics, autonomous defense game theory, zero-knowledge proof systems for operational security, temporal correlation at scale, and biological-physical security integration. We formalize the Mantis autonomous defense environment as a Gymnasium-compatible reinforcement learning system with self-play training, introduce Chameleon, a five-channel defensive steganography framework using dynamic key rotation and Shamir Secret Sharing, and develop a ZK-Evidence Ledger for cryptographic evidence chains with Merkle tree notarization and Circom-based inclusion proofs. The convergence of these systems produces an anticipatory architecture where offensive research (Helix synthetic organization detection), defensive operations (Mantis game-theoretic simulation), and attribution resistance (zero-knowledge Merkle proofs) form a closed operational loop.
Notes
Files
predictive-augmentation-framework.pdf
Files
(153.7 kB)
| Name | Size | Download all |
|---|---|---|
|
md5:edb00dcb03680ef30d1d4f55048db13e
|
118.4 kB | Preview Download |
|
md5:799b24082afd3264799ca67463117e80
|
35.2 kB | Download |
Additional details
Related works
- Is part of
- 10.5281/zenodo.18501586 (DOI)