Knowledge-Guided Bayesian Support Vector Machine for High-Dimensional Data with Application to Analysis of Genomics Data.

Wenli Sun, Changgee Chang, Yize Zhao, Qi Long
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引用次数: 7

Abstract

Support vector machine (SVM) is a popular classification method for the analysis of wide range of data including big data. Many SVM methods with feature selection have been developed under frequentist regularization or Bayesian shrinkage frameworks. On the other hand, the importance of incorporating a priori known biological knowledge, such as gene pathway information which stems from the gene regulatory network, into the statistical analysis of genomic data has been recognized in recent years. In this article, we propose a new Bayesian SVM approach that enables the feature selection to be guided by the knowledge on the graphical structure among predictors. The proposed method uses the spike-and-slab prior for feature selection, combined with the Ising prior that encourages group-wise selection of the predictors adjacent to each other on the known graph. Gibbs sampling algorithm is used for Bayesian inference. The performance of our method is evaluated and compared with existing SVM methods in terms of prediction and feature selection in extensive simulation settings. In addition, our method is illustrated in the analysis of genomic data from a cancer study, demonstrating its advantage in generating biologically meaningful results and identifying potentially important features.

Abstract Image

Abstract Image

高维数据的知识引导贝叶斯支持向量机及其在基因组学数据分析中的应用。
支持向量机(SVM)是一种流行的分类方法,用于分析包括大数据在内的广泛数据。许多具有特征选择的SVM方法已经在频率正则化或贝叶斯收缩框架下发展起来。另一方面,近年来,将先验的已知生物学知识,例如源于基因调控网络的基因通路信息,纳入基因组数据的统计分析的重要性已经得到了认可。在本文中,我们提出了一种新的贝叶斯SVM方法,该方法使特征选择能够由预测因子之间的图形结构知识来指导。所提出的方法使用尖峰和平板先验进行特征选择,并结合Ising先验,以鼓励对已知图上彼此相邻的预测因子进行分组选择。吉布斯采样算法用于贝叶斯推理。在广泛的模拟环境中,评估了我们的方法在预测和特征选择方面的性能,并与现有的SVM方法进行了比较。此外,我们的方法在癌症研究的基因组数据分析中得到了说明,证明了其在产生有生物学意义的结果和识别潜在重要特征方面的优势。
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