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首页> 外文期刊>Neural Networks: The Official Journal of the International Neural Network Society >On the construction of the relevance vector machine based on Bayesian Ying-Yang harmony learning
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On the construction of the relevance vector machine based on Bayesian Ying-Yang harmony learning

机译:基于贝叶亚英阳和谐学习的基于贝叶亚yany-yang的相关矢量机建设

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摘要

Tipping's relevance vector machine (RVM) applies kernel methods to construct basis function networks using a least number of relevant basis functions. Compared to the well-known support vector machine (SVM), the RVM provides a better sparsity, and an automatic estimation of hyperparameters. However, the performance of the original RVM purely depends on the smoothness of the presumed prior of the connection weights and parameters. Consequently, the sparsity is actually still controlled by the choice of kernel functions and/or kernel parameters. This may lead to severe underfitting or overfitting in some cases. In this research, we explicitly involve the number of basis functions into the objective of the optimization procedure, and construct the RVM by maximizing the harmony function between "hypothetical" probability distribution in the forward training pathway and "true" probability distribution in the backward testing pathway, using Xu's Bayesian Ying-Yang (BYY) harmony learning technique. The experimental results have shown that our proposed methodology can achieve both the least complexity of structure and goodness of fit to data.
机译:TIPPITS的相关矢量机(RVM)应用内核方法使用最小数量的相关基本函数构建基函数网络。与众所周知的支持向量机(SVM)相比,RVM提供了更好的稀疏性,以及超参数的自动估计。然而,原始RVM的性能纯粹取决于连接权重和参数之前假定的平滑度。因此,实际上仍然可以通过选择内核函数和/或内核参数来控制稀疏性。在某些情况下,这可能导致严重的磨损或过度装备。在这项研究中,我们明确地涉及基础函数的数量进入优化过程的目的,并通过在向后测试中最大化“假设”概率分布的“假设”概率分布之间的和谐功能和“真实”概率分布在后向测试中构建RVM途径,使用徐的贝叶斯ying yang(byy)和谐学习技术。实验结果表明,我们提出的方法可以实现结构的最小复杂性和适合数据的良好。

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