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The bounds on the risk for real-valued loss functions on possibility space

机译:可能性空间上实值损失函数的风险界限

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Statistical learning theory on probability space is an important part of Machine Learning. Based on the key theorem, the bounds of uniform convergence have significant meaning. These bounds determine generalization ability of the learning machines utilizing the empirical risk minimization induction principle. In this paper, the bounds on the risk for real-valued loss function of the learning processes on possibility space are discussed, and the rate of uniform convergence is estimated.
机译:关于概率空间的统计学习理论是机器学习的重要组成部分。根据关键定理,均匀收敛的边界具有重要的意义。这些界限利用经验风险最小化归纳原理确定学习机的泛化能力。本文讨论了在可能性空间上学习过程的实值损失函数的风险界限,并估计了均匀收敛的速率。

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