Blockchain and Machine Learning as Deep Reinforcement

Hiba S. Mahdi
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Abstract

Due to its capacity to make wise decisions, deep learning has become extremely popular in recent years. The current generation of deep learning, which heavily rely centralized servers, are unable to offer attributes like operational transparency, stability, security, and reliable data provenance. Additionally, Single point of failure is a problem that deep learning designs are susceptible since they need centralized data to train them. We review the body of research on the application of deep learning to blockchain. We categorize and arrange the literature for developing topic taxonomy based their criteria: Application domain, deep learning-specific consensus mechanisms, goals for deployment and blockchain type. To facilitate meaningful discussions, we list the benefits and drawbacks of the most cutting-edge blockchain-based deep learning frameworks.
区块链和机器学习作为深度强化
当前这一代深度学习严重依赖集中式服务器,无法提供操作透明度、稳定性、安全性和可靠的数据来源等属性。此外,单点故障是深度学习设计容易受到影响的问题,因为它们需要集中的数据来训练它们。我们回顾了深度学习在区块链中的应用研究。我们根据标准对开发主题分类法的文献进行分类和整理:应用领域,深度学习特定的共识机制,部署目标和区块链类型。为了促进有意义的讨论,我们列出了最先进的基于区块链的深度学习框架的优点和缺点。
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