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Decryption Through Polynomial Ambiguity: Noise-Enhanced High-Memory Convolutional Codes for Post-Quantum Cryptography

Published: December 2, 2025 | arXiv ID: 2512.02822v2

By: Meir Ariel

Potential Business Impact:

Makes secret messages unreadable by future quantum computers.

Business Areas:
Quantum Computing Science and Engineering

We present a novel approach to post-quantum cryptography that employs directed-graph decryption of noise-enhanced high-memory convolutional codes. The proposed construction generates random-like generator matrices that effectively conceal algebraic structure and resist known structural attacks. Security is further reinforced by the deliberate injection of strong noise during decryption, arising from polynomial division: while legitimate recipients retain polynomial-time decoding, adversaries face exponential-time complexity. As a result, the scheme achieves cryptanalytic security margins surpassing those of Classic McEliece by factors exceeding 2^(200). Beyond its enhanced security, the method offers greater design flexibility, supporting arbitrary plaintext lengths with linear-time decryption and uniform per-bit computational cost, enabling seamless scalability to long messages. Practical deployment is facilitated by parallel arrays of directed-graph decoders, which identify the correct plaintext through polynomial ambiguity while allowing efficient hardware and software implementations. Altogether, the scheme represents a compelling candidate for robust, scalable, and quantum-resistant public-key cryptography.

Page Count
23 pages

Category
Computer Science:
Cryptography and Security