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首页> 外文期刊>Journal of the Physical Society of Japan >Online learning of Perceptron from noisy data: A case in which both student and teacher suffer from external noise
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Online learning of Perceptron from noisy data: A case in which both student and teacher suffer from external noise

机译:从嘈杂的数据在线学习Perceptron:学生和老师都受到外部噪音困扰的情况

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摘要

We analyze the online learning of a Perceptron (student) from signals produced by a single Perceptron (teacher) in which both the student and the teacher suffer from external noise. We adopt three typical learning rules and treat the input and output noises. In order to improve learning when it fails in the sense that the student vector does not converge to the teacher vector, we use a method based on the optimal learning rate. Furthermore, in order to control learning, we propose a concrete method for the Perceptron rule in the output noise model. Finally, we analyze time domain ensemble online learning. The theoretical results agree quite well with the numerical simulation results.
机译:我们从单个感知器(教师)产生的信号中分析感知器(学生)的在线学习,在该信号中学生和老师都遭受外部噪声的影响。我们采用三种典型的学习规则,并处理输入和输出噪声。为了在学生向量不收敛到教师向量的意义上改善失败时的学习,我们使用基于最佳学习率的方法。此外,为了控制学习,我们针对输出噪声模型中的感知器规则提出了一种具体方法。最后,我们分析了时域集成在线学习。理论结果与数值模拟结果非常吻合。

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