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Max-Margin Based Learning for Discriminative Bayesian Network from Neuroimaging Data

机译:基于最大余量的神经影像数据用于判别贝叶斯网络的学习

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Recently, neuroimaging data have been increasingly used to study the causal relationship among brain regions for the understanding and diagnosis of brain diseases. Recent work on sparse Gaussian Bayesian network (SGBN) has shown it as an efficient tool to learn large scale directional brain networks from neuroimaging data. In this paper, we propose a learning approach to constructing SGBNs that are both representative and discriminative for groups in comparison. A maxmargin criterion built directly upon the SGBN models is proposed to effectively optimize the classification performance of the SGBNs. The proposed method shows significant improvements over the state-of-the-art works in the discriminative power of SGBNs.
机译:最近,神经影像数据已越来越多地用于研究大脑区域之间的因果关系,以了解和诊断脑部疾病。稀疏高斯贝叶斯网络(SGBN)的最新研究表明,它是一种从神经影像数据学习大规模定向脑网络的有效工具。在本文中,我们提出了一种学习方法来构造SGBN,这些SGBN对于比较组而言既具有代表性又具有歧视性。提出了直接建立在SGBN模型上的最大余量准则,以有效地优化SGBN的分类性能。所提出的方法在SGBN的判别力方面显示了对最新技术的显着改进。

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