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Self-Generating Policies for Machine Learning in Coalition Environments

机译:联盟环境中机器学习的自我创造政策

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In any machine learning problem, obtaining and acquiring good training data is the main challenge that needs to be overcome to build a good model. When applying machine learning approaches in the context of coalition operations, one may only be able to get data for training machine learning models from coalition partners. However, all coalition partners may not be equally trusted, thus the task of deciding when, and when not, to accept training data for coalition operations remain complex. Policies can provide a mechanism for making these decisions but determining the right policies may be difficult given the variability of the environment. Motivated by this observation, in this paper, we propose an architecture that can generate policies required for building a machine learning model in a coalition environment without a significant amount of human input.
机译:在任何机器学习问题中,获得和获取良好的培训数据是需要克服的主要挑战,以建立一个好模型。在联盟行动的背景下应用机器学习方法时,人们只能获得从联盟合作伙伴培训机器学习模型的数据。然而,所有联盟合作伙伴可能不同样信任,因此决定何时,何时不接受联盟行动培训数据的任务仍然很复杂。策略可以提供制作这些决定的机制,但鉴于环境的可变性,可能难以确定正确的政策。在本文中,通过该观察,我们提出了一种建筑,可以在没有大量人体投入的情况下建立在联盟环境中建立机器学习模型所需的策略。

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