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Sparse Hierarchical Interaction Learning with Epigraphical Projection

机译:用回物投影稀疏分层交互学习

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This work focuses on learning optimization problems with quadratical interactions between variables, which go beyond the additive models of traditional linear learning. We investigate more specifically two different methods encountered in the literature to deal with this problem: "hierNet" and structured-sparsity regularization, and study their connections. We propose a primal-dual proximal algorithm based on an epigraphical projection to optimize a general formulation of these learning problems. The experimental setting first highlights the improvement of the proposed procedure compared to state-of-the-art methods based on fast iterative shrinkage-thresholding algorithm (i.e. FISTA) or alternating direction method of multipliers (i.e. ADMM), and then, using the proposed flexible optimization framework, we provide fair comparisons between the different hierarchical penalizations and their improvement over the standard l(1)-norm penalization. The experiments are conducted both on synthetic and real data, and they clearly show that the proposed primal-dual proximal algorithm based on epigraphical projection is efficient and effective to solve and investigate the problem of hierarchical interaction learning.
机译:这项工作侧重于学习优化问题与变量之间的四重交互,超出了传统线性学习的附加模型。我们更具体地调查文献中遇到的两种不同方法来处理这个问题:“Hiernet”和结构稀疏正规化,并研究其连接。我们提出了一种基于物超性投影的基因双近端算法,优化了这些学习问题的普遍配方。实验设置首先突出了基于快速迭代收缩阈值算法(即FISTA)或乘法器(IE ADMM)的最新方法(即常规)的最先进方法的提出的过程的改进,然后使用提议的方法灵活的优化框架,我们在不同的分层惩罚与标准L(1)的改进之间提供了公平的比较 - 爆罚。实验是在合成和实数据上进行的,他们清楚地表明,基于回物投影的提议的原始双近端算法是有效且有效的解决和研究层次互动学习的问题。

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