基于贝叶斯塔克分解的无监督特征选择 / Unsupervised feature selection using Bayesian Tucker decomposition
1️⃣ 一句话总结
这篇论文提出了一种名为贝叶斯塔克分解的新方法,通过假设数据残差服从高斯分布,成功实现了对合成数据、复杂系统和基因表达谱的无监督特征选择,显示出广阔的应用前景。
In this paper, we proposed Bayesian Tucker decomposition (BTuD) in which residual is supposed to obey Gaussian distribution analogous to linear regression. Although we have proposed an algorithm to perform the proposed BTuD, the conventional higher-order orthogonal iteration can generate Tucker decomposition consistent with the present implementation. Using the proposed BTuD, we can perform unsupervised feature selection successfully applied to various synthetic datasets, global coupled maps with randomized coupling strength, and gene expression profiles. Thus we can conclude that our newly proposed unsupervised feature selection method is promising. In addition to this, BTuD based unsupervised FE is expected to coincide with TD based unsupervised FE that were previously proposed and successfully applied to a wide range of problems.
基于贝叶斯塔克分解的无监督特征选择 / Unsupervised feature selection using Bayesian Tucker decomposition
这篇论文提出了一种名为贝叶斯塔克分解的新方法,通过假设数据残差服从高斯分布,成功实现了对合成数据、复杂系统和基因表达谱的无监督特征选择,显示出广阔的应用前景。
源自 arXiv: 2604.14949