Paper 2025/2225

Learning with Errors with Output Dependencies: LWE, LWR, and Physical Learning Problems under the Same Umbrella

Clément Hoffmann, NTT (Japan)
Pierrick Méaux, University of Luxembourg
Mélissa Rossi, CryptoExperts (France)
François-Xavier Standaert, Université Catholique de Louvain
Abstract

Learning problems have become a foundational element for constructing quantum-resistant cryptographic schemes, finding broad application even beyond, such as in Fully Homomorphic Encryption. The increasing complexity of this field, marked by the rise of physical learning problems due to research into side-channel leakage and secure hardware implementations, underscores the urgent need for a more comprehensive analytical framework capable of encompassing these diverse variants. In response, we introduce Learning With Error with Output Dependencies (LWE-OD), a novel learning problem defined by an error distribution that depends on the inner product value and therefore on the key. LWE-OD instances are remarkably versatile, generalizing both established theoretical problems like Learning With Errors (LWE) or Learning With Rounding (LWR), and emerging physical problems such as Learning With Physical Rounding (LWPR). Our core contribution is establishing a reduction from LWE-OD to LWE. This is accomplished by leveraging an intermediate problem, denoted qLWE. Our reduction follows a two-step, simulator-based approach, yielding explicit conditions that guarantee LWE-OD is at least as computationally hard as LWE. While this theorem provides a valuable reduction, it also highlights a crucial distinction among reductions: those that allow explicit calculation of target distributions versus weaker ones with conditional results. To further demonstrate the utility of our framework, we offer new proofs for existing results, specifically the reduction from LWR to LWE and from Learning Parity with Noise with Output Dependencies (LPN-OD) to LPN. This new reduction opens the door for a potential reduction from LWPR to LWE.

Note: Published at PQ Crypto 2026.

Metadata
Available format(s)
PDF
Category
Foundations
Publication info
Published elsewhere. PQ Crypto 2026
Keywords
learning problemreductionside-channel theoryphysical learning problems
Contact author(s)
clement hoffmann @ hotmail fr
pierrick meaux @ uni lu
melissa rossi @ cryptoexperts com
fstandae @ uclouvain be
History
2026-02-25: revised
2025-12-10: received
See all versions
Short URL
https://ia.cr/2025/2225
License
Creative Commons Attribution
CC BY

BibTeX

@misc{cryptoeprint:2025/2225,
      author = {Clément Hoffmann and Pierrick Méaux and Mélissa Rossi and François-Xavier Standaert},
      title = {Learning with Errors with Output Dependencies: {LWE}, {LWR}, and Physical Learning Problems under the Same Umbrella},
      howpublished = {Cryptology {ePrint} Archive, Paper 2025/2225},
      year = {2025},
      url = {https://eprint.iacr.org/2025/2225}
}
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