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A proposal of privacy preserving reinforcement learning for secure multiparty computation

机译:保留安全多方计算的隐私救济学习的建议

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摘要

Many studies have been done with the security of cloud computing. Though data encryption is a typical approach, high computing complexity for encryption and decryption of data is needed. Therefore, safe system for distributed processing with secure data attracts attention, and a lot of studies have been done. Secure multiparty computation (SMC) is one of these methods. Specifically, two learning methods for machine learning (ML) with SMC are known. One is to divide learning data into several subsets and perform learning. The other is to divide each item of learning data and perform learning. So far, most of works for ML with SMC are ones with supervised and unsupervised learning such as BP and K-means methods. It seems that there does not exist any studies for reinforcement learning (RL) with SMC. This paper proposes learning methods with SMC for Q-learning which is one of typical methods for RL. The effectiveness of proposed methods is shown by numerical simulation for the maze problem.
机译:许多研究已经完成了云计算的安全性。虽然数据加密是一种典型的方法,但需要用于加密和数据解密的高计算复杂度。因此,具有安全数据的分布式处理的安全系统引起了注意力,并且已经完成了大量研究。安全多方计算(SMC)是其中一种方法。具体而言,已知具有SMC的机器学习(ML)的两种学习方法。一个是将学习数据分成几个子集并执行学习。另一个是划分每个学习数据并执行学习。到目前为止,ML的大部分工作都是具有监督和无监督的学习的ML的作品,例如BP和K-Means方法。似乎没有任何用于SMC的强化学习(RL)的研究。本文提出了具有SMC的学习方法,用于Q学习,这是RL的典型方法之一。所提出的方法的有效性由迷宫问题的数值模拟显示。

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