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Method for Determining Parameters of Posterior Probability SVM Based on Relative Cross Entropy

机译:基于相对交叉熵的后验概率支持向量机参数确定方法

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The technology of support vector machines (SVM) is being widely used in many research fields at present, but standard SVM does not provide posterior probability that is needed in many uncertain classification problems. To solve this problem, a probability SVM model is built firstly, then the cross entropy and relative cross entropy model for classification problems are built. Finally, the method for determining parameters of probability SVM model is put forward by minimizing relative cross entropy. Experiment results show that the method of determining model parameters is reasonable, and the posterior probability SVM model is effective.
机译:支持向量机(SVM)技术目前在许多研究领域中得到广泛使用,但是标准SVM并不能提供许多不确定的分类问题所需的后验概率。为解决这一问题,首先建立了概率支持向量机模型,然后建立了分类问题的交叉熵和相对交叉熵模型。最后,通过最小化相对交叉熵,提出了确定概率支持向量机模型参数的方法。实验结果表明,确定模型参数的方法是合理的,后验概率支持向量机模型是有效的。

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