Dual Descent Methods as Tension Reduction Systems

作者:Bento Glaydston de Carvalho; da Cruz Neto Joao Xavier; Soubeyran Antoine; de Sousa Junior Valdines Leite
来源:Journal of Optimization Theory and Applications, 2016, 171(1): 209-227.
DOI:10.1007/s10957-016-0994-y

摘要

In this paper, driven by applications in Behavioral Sciences, wherein the speed of convergence matters considerably, we compare the speed of convergence of two descent methods for functions that satisfy the well-known Kurdyka-Lojasiewicz property in a quasi-metric space. This includes the extensions to a quasi-metric space of both the primal and dual descent methods. While the primal descent method requires the current step to be more or less half of the size of the previous step, the dual approach considers more or less half of the previous decrease in the objective function to be minimized. We provide applications to the famous "Tension systems approach" in Psychology.

  • 出版日期2016-10