ezDPS: An Efficient and Zero-Knowledge Machine Learning Inference Pipeline

Haodi Wang, Thang Hoang
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Abstract

Machine Learning as a service (MLaaS) permits resource-limited clients to access powerful data analytics services ubiquitously. Despite its merits, MLaaS poses significant concerns regarding the integrity of delegated computation and the privacy of the server’s model parameters. To address this issue, Zhang et al. (CCS'20) initiated the study of zero-knowledge Machine Learning (zkML). Few zkML schemes have been proposed afterward; however, they focus on sole ML classification algorithms that may not offer satisfactory accuracy or require large-scale training data and model parameters, which may not be desirable for some applications. We propose ezDPS, a new efficient and zero-knowledge ML inference scheme. Unlike prior works, ezDPS is a zkML pipeline in which the data is processed in multiple stages for high accuracy. Each stage of ezDPS is harnessed with an established ML algorithm that is shown to be effective in various applications, including Discrete Wavelet Transformation, Principal Components Analysis, and Support Vector Machine. We design new gadgets to prove ML operations effectively. We fully implemented ezDPS and assessed its performance on real datasets. Experimental results showed that ezDPS achieves one-to-three orders of magnitude more efficient than the generic circuit-based approach in all metrics while maintaining more desirable accuracy than single ML classification approaches.
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ezDPS:高效的零知识机器学习推理管道
机器学习即服务(MLaaS)允许资源有限的客户无处不在地访问功能强大的数据分析服务。尽管有其优点,但MLaaS对委托计算的完整性和服务器模型参数的隐私性提出了重大关切。为了解决这个问题,Zhang等人(CCS'20)发起了零知识机器学习(zkML)的研究。后来很少有人提出zkML方案;然而,他们专注于单一的ML分类算法,这些算法可能无法提供令人满意的准确性,或者需要大规模的训练数据和模型参数,这对于某些应用来说可能是不可取的。提出了一种新的高效的零知识机器学习推理方案ezDPS。与之前的工作不同,ezDPS是一个zkML管道,其中数据在多个阶段进行处理,以实现高精度。ezDPS的每个阶段都采用了一种已建立的ML算法,该算法在各种应用中都是有效的,包括离散小波变换、主成分分析和支持向量机。我们设计了新的小工具来有效地证明机器学习操作。我们完全实现了ezDPS,并在真实数据集上评估了它的性能。实验结果表明,ezDPS在所有指标上都比基于通用电路的方法效率高1 - 3个数量级,同时保持比单一ML分类方法更理想的准确性。
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