在委员会机器中通过自我意识控制错误信号

Yong Liu
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引用次数: 4

摘要

可以肯定的是,为了使委员会机达到更好的性能,每个学习者都应该是不同的。然而,单个学习者之间的差异不足以使委员会机器对未知数据进行很好的预测。对于每个个体学习者来说,能够决定是否在每个给定的例子中学习与其他个体不同,这是至关重要的。实现这种决策的一种方法是通过自我意识。自我意识使委员会机器中的个体学习者在学习过程中更加灵活。有了自我意识,个体学习者可以选择通过缩小错误信号来放慢正确输出的速度,或者在给定数据上更快地离开正确输出。本文在两个医疗数据集上测试了与缩放误差信号负相关的学习,以表明在委员会机中,个体学习者自己调整误差信号的重要性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
Control of the error signals by self-awareness in committee machines
It is certain that the individual learners should be different from each other in order for a committee machine to reach the better performance. However, differences alone among the individual learners are not enough for the committee machine to predict well on the unknown data. It would be essential for each individual learner to be able to decide whether to learn to be different or not to the other individuals on each given example. One way to implement such decision is through self-awareness. Self-awareness makes the individual learners in the committee machine be even more flexible during the learning process. With self-awareness, an individual learner could choose to go slower to the correct output by scaling down the error signals, or leave away faster from the correct output on a given data. In this paper, negative correlation learning with the scaled error signals were tested on the two medical data sets to show how important it is to adjust the error signals by the individual learners themselves in the committee machines.
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