Learning incoherent sparse and low-rank patterns from multiple tasks

Jianhui Chen, Ji Liu, Jieping Ye
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引用次数: 71

Abstract

We consider the problem of learning incoherent sparse and low-rank patterns from multiple tasks. Our approach is based on a linear multi-task learning formulation, in which the sparse and low-rank patterns are induced by a cardinality regularization term and a low-rank constraint, respectively. This formulation is non-convex; we convert it into its convex surrogate, which can be routinely solved via semidefinite programming for small-size problems. We propose to employ the general projected gradient scheme to efficiently solve such a convex surrogate; however, in the optimization formulation, the objective function is non-differentiable and the feasible domain is non-trivial. We present the procedures for computing the projected gradient and ensuring the global convergence of the projected gradient scheme. The computation of projected gradient involves a constrained optimization problem; we show that the optimal solution to such a problem can be obtained via solving an unconstrained optimization subproblem and an Euclidean projection subproblem. In addition, we present two projected gradient algorithms and discuss their rates of convergence. Experimental results on benchmark data sets demonstrate the effectiveness of the proposed multi-task learning formulation and the efficiency of the proposed projected gradient algorithms.
从多个任务中学习不连贯的稀疏和低秩模式
我们考虑了从多个任务中学习非相干稀疏和低秩模式的问题。我们的方法基于线性多任务学习公式,其中稀疏模式和低秩模式分别由基数正则化项和低秩约束诱导。这个公式是非凸的;我们将其转化为它的凸代理,它可以通过对小尺寸问题的半确定规划进行常规求解。我们建议采用一般投影梯度格式来有效地求解这种凸代理;然而,在优化公式中,目标函数是不可微的,可行域是非平凡的。我们给出了计算投影梯度和保证投影梯度格式全局收敛的方法。投影梯度的计算涉及一个约束优化问题;通过求解一个无约束优化子问题和一个欧氏投影子问题,得到了该问题的最优解。此外,我们还提出了两种投影梯度算法,并讨论了它们的收敛速度。在基准数据集上的实验结果证明了所提出的多任务学习公式的有效性和所提出的投影梯度算法的有效性。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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