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The Generalization Performance of Learning Machine with NA Dependent Sequence

机译:na依赖序列学习机的泛化性能

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The generalization performance is the main purpose of machine learning theoretical research. This note mainly focuses on a theoretical analysis of learning machine with negatively associated dependent input sequence. The explicit bound on the rate of uniform convergence of the empirical errors to their expected error based on negatively associated dependent input sequence is obtained by the inequality of Joag-dev and Proschan. The uniform convergence approach is used to estimate the convergence rate of the sample error of learning machine that minimize empirical risk with negatively associated dependent input sequence. In the end, we compare these bounds with previous results.
机译:泛化性能是机器学习理论研究的主要目的。本说明主要集中在具有负相关相关输入序列的学习机的理论分析。通过JOAG-DEV和PROSCHAN的不等式获得了基于负相关的相关输入序列的经验误差均匀收敛到其预期误差的明确限制。统一的收敛方法用于估计学习机器的样本误差的收敛速率,从而最小化具有负相关的相关输入序列的经验风险。最后,我们将这些界限与以前的结果进行比较。

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