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Distributed Training in Access Control Model

机译:访问控制模型中的分布式培训

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摘要

Classification and regression prediction of access objects in distributed access control model is a very important basic task in distributed access control model. Machine learning plays an important role in the field of intelligent access control in the future, especially in the application of machine learning methods to solve classification and regression problems. The paper proposes a learning method of distributed collaborative training, which can reduce the communication consumption of node policy update and increase the access execution margin of a single node. Improve model performance
机译:分布式访问控制模型中访问对象的分类和回归预测是分布式访问控制模型中非常重要的基本任务。机器学习在未来的智能访问控制领域中扮演着重要的角色,尤其是在机器学习方法的应用中,它解决了分类和回归问题。提出了一种分布式协作训练的学习方法,可以减少节点策略更新的通信消耗,提高单个节点的访问执行余量。改善模型性能

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