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A Relax Inexact Accelerated Proximal Gradient Method for the Constrained Minimization Problem of Maximum Eigenvalue Functions

机译:用于最大特征值函数的约束最小化问题的放松不精确的近端梯度方法

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摘要

For constrained minimization problem of maximum eigenvalue functions, since the objective function is nonsmooth, we can use the approximate inexact accelerated proximal gradient (AIAPG) method (Wang et al., 2013) to solve its smooth approximation minimization problem. When we take the function g(X)=δΩ(X)  (Ω∶={X∈Sn:F(X)=b,X⪰0}) in the problem min{λmax(X)+g(X):X∈Sn}, where λmax(X) is the maximum eigenvalue function, g(X) is a proper lower semicontinuous convex function (possibly nonsmooth) and δΩ(X) denotes the indicator function. But the approximate minimizer generated by AIAPG method must be contained in Ω otherwise the method will be invalid. In this paper, we will consider the case where the approximate minimizer cannot be guaranteed in Ω. Thus we will propose two different strategies, respectively, constructing the feasible solution and designing a new method named relax inexact accelerated proximal gradient (RIAPG) method. It is worth mentioning that one advantage when compared to the former is that the latter strategy can overcome the drawback. The drawback is that the required conditions are too strict. Furthermore, the RIAPG method inherits the global iteration complexity and attractive computational advantage of AIAPG method.
机译:对于最大特征值函数的受限最小化问题,由于目标函数是非光滑的,我们可以使用近似的不精确加速近端梯度(AIAPG)方法(Wang等,2013)来解决其平稳近似最小化问题。当我们采取函数g(x)=Δω(x)时(ω:= {x∈sn:f(x)= b,x⪰0})在min {λmax(x)+ g(x)中: X∈sn},其中λmax(x)是最大特征值函数,g(x)是一个适当的下半连续凸起功能(可能是非光驱),Δω(x)表示指示灯函数。但是,AIAPG方法生成的近似最小化必须包含在Ω中,否则该方法将无效。在本文中,我们将考虑在ω不能保证近似最小化器的情况。因此,我们将分别提出两种不同的策略,构建可行的解决方案和设计一个名为松弛不精确加速的近端梯度(RIAPG)方法的新方法。值得一提的是,与前者相比,一个优势是后一种策略可以克服缺点。缺点是所需的条件太严格了。此外,RIAPG方法继承了AIAPG方法的全局迭代复杂性和有吸引力的计算优势。

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