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Bayesian Group Feature Selection for Support Vector Learning Machines

机译:支持向量学习机的贝叶斯群特征选择

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Group Feature Selection (GFS) has proven to be useful in improving the interpretability and prediction performance of learned model parameters in many machine learning and data mining applications. Existing GFS models were mainly based on square loss and logistic loss for regression and classification, leaving the ε-insensitive loss and the hinge loss popularized by Support Vector Learning (SVL) machines still unexplored. In this paper, we present a Bayesian GFS framework for SVL machines based on the pseudo likelihood and data augmentation idea. With Bayesian inference, our method can circumvent the cross-validation for regularization parameters. Specifically, we apply the mean field variational method in an augmented space to derive the posterior distribution of model parameters and hyper-parameters for Bayesian estimation. Both regression and classification experiments conducted on synthetic and real-world data sets demonstrate that our proposed approach outperforms a number of competitors.
机译:事实证明,在许多机器学习和数据挖掘应用程序中,组特征选择(GFS)有助于提高学习的模型参数的可解释性和预测性能。现有的GFS模型主要基于平方损失和逻辑损失进行回归和分类,因此尚待探索由支持向量学习(SVL)机器普及的ε不敏感损失和铰链损失。在本文中,我们提出了一种基于伪似然和数据增强思想的SVL机器的贝叶斯GFS框架。利用贝叶斯推断,我们的方法可以规避正则化参数的交叉验证。具体来说,我们在扩展空间中应用均值场变分方法来导出模型参数和超参数的后验分布,以进行贝叶斯估计。在综合和真实数据集上进行的回归和分类实验均表明,我们提出的方法优于许多竞争对手。

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