Kwok J Y
Department of Computer Science, Hong Kong Baptist University, Kowloon Tong, Hong Kong.
IEEE Trans Neural Netw. 1999;10(5):1018-31. doi: 10.1109/72.788642.
In this paper, we extend the use of moderated outputs to the support vector machine (SVM) by making use of a relationship between SVM and the evidence framework. The moderated output is more in line with the Bayesian idea that the posterior weight distribution should be taken into account upon prediction, and it also alleviates the usual tendency of assigning overly high confidence to the estimated class memberships of the test patterns. Moreover, the moderated output derived here can be taken as an approximation to the posterior class probability. Hence, meaningful rejection thresholds can be assigned and outputs from several networks can be directly compared. Experimental results on both artificial and real-world data are also discussed.
在本文中,我们通过利用支持向量机(SVM)与证据框架之间的关系,将适度输出的应用扩展到支持向量机。适度输出更符合贝叶斯思想,即在预测时应考虑后验权重分布,并且它还减轻了通常对测试模式的估计类别成员资格赋予过高置信度的倾向。此外,这里导出的适度输出可以被视为后验类别概率的近似值。因此,可以分配有意义的拒绝阈值,并且可以直接比较来自多个网络的输出。还讨论了在人工数据和真实世界数据上的实验结果。