Nonlinear eigenvalue problems for pairs of homogeneous convex functions are particular nonlinear constrained optimization problems that arise in a variety of settings, including graph mining, machine learning, and network science. By considering different notions of duality transforms from both classical and recent convex geometry theory, in this work we show that one can move from the primal to the dual nonlinear eigenvalue formulation maintaining the spectrum, the variational spectrum as well as the corresponding multiplicities unchanged. These nonlinear spectral duality properties can be used to transform the original optimization problem into various alternative and possibly more treatable dual problems. We illustrate the use of nonlinear spectral duality in a variety of example settings involving optimization problems on graphs, nonlinear Laplacians, and distances between convex bodies.
翻译:对等同质二次曲线函数的非线性二次曲线值问题,是各种环境中出现的非线性限制优化问题,包括图解挖掘、机器学习和网络科学。通过考虑古老和最近的二次曲线几何理论的双重性转变的不同概念,我们在此工作中表明,从原始到双线性非线性二次曲线的配方可以维持光谱、变异频谱以及相应的多光谱不变。这些非线性光谱双重性特性可用于将原始的优化问题转化为各种可替代的、可能更可处理的双重问题。我们举例说明了在各种例子环境中使用非线性双光谱双重性的情况,涉及图形上的优化问题、非线性拉普拉比亚和锥体之间的距离。