AI模型交易中可转让的唯一版权:区块链驱动的不可替代代币方法

Yixin Fan, Guozhi Hao, Jun Wu
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引用次数: 0

摘要

目前,机器学习即服务(MLaaS)极大地促进了人工智能(AI)模型交易。然而,模型盗版和专利掠夺等威胁严重侵犯了人工智能模型的版权。目前的侵入性版权保护方案主要依靠水印将特定信息嵌入到人工智能模型中,这不可避免地降低了准确性。而非侵入性方案,如对抗样本,不能保证唯一性,因为对抗样本生成算法会为所有交易者所知,因此需要在交易后进行更改。为了使所有权信息能够在人工智能模型交易中转移,我们提出了一种区块链驱动的不可替代代币(NFT)方法,用于面向交易的人工智能模型版权保护。我们设计了一种从人工智能模型参数到nft的映射机制,该机制可以识别跨交易的人工智能模型的唯一性和所有权。此外,提出了基于声誉的奖惩机制来防止NFT盗版。最后,通过评价验证了该方法的适用性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Transferable Unique Copyright Across AI Model Trading: A Blockchain-Driven Non-Fungible Token Approach
Currently, Machine Learning as a Service (MLaaS) greatly benefits artificial intelligence (AI) model trading. However, threats such as model piracy and patent grabbing devastatingly violate the copyright of AI models. Current invasive copyright protection solutions mainly rely on watermarking to embed specific information into AI models, which inevitably decreases the accuracy. While non-invasive schemes, such as adversarial samples, cannot guarantee uniqueness as the adversarial sample generation algorithm would be known to all traders, and thus need to be changed after trading. To enable the ownership information transferable across AI model trading, we propose a blockchain-driven Non-Fungible Token (NFT) approach for trading-oriented AI model copyright protection. We design a mapping mechanism from AI models parameters to NFTs which can identify uniqueness and ownership of AI models across trading. Besides, a reputation-based rewards and penalties scheme is proposed to prevent NFT piracy. Lastly, the evaluation verifies the applicability of our approach.
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