Proof-of-Learning with Incentive Security
Zishuo Zhao, Zhixuan Fang, Xuechao Wang, Xi Chen, Hongxu Su, Haibo Xiao, Yuan Zhou

TL;DR
This paper introduces a provably incentive-secure Proof-of-Learning mechanism that enhances blockchain security, reduces computational overhead, and ensures security even with untrusted providers, promoting eco-friendly decentralized AI computing.
Contribution
It presents a novel incentive-security framework for Proof-of-Learning, achieving efficiency, security guarantees, and robustness against attacks and untrusted providers.
Findings
Secure against two types of attacks.
Reduces computational overhead from Θ(1) to O(log E / E).
Guarantees incentive-security with untrusted problem providers.
Abstract
Most concurrent blockchain systems rely heavily on the Proof-of-Work (PoW) or Proof-of-Stake (PoS) mechanisms for decentralized consensus and security assurance. However, the substantial energy expenditure stemming from computationally intensive yet meaningless tasks has raised considerable concerns surrounding traditional PoW approaches, The PoS mechanism, while free of energy consumption, is subject to security and economic issues. Addressing these issues, the paradigm of Proof-of-Useful-Work (PoUW) seeks to employ challenges of practical significance as PoW, thereby imbuing energy consumption with tangible value. While previous efforts in Proof of Learning (PoL) explored the utilization of deep learning model training SGD tasks as PoUW challenges, recent research has revealed its vulnerabilities to adversarial attacks and the theoretical hardness in crafting a byzantine-secure PoL…
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