A twice continuously differentiable penalty function for nonlinear semidefinite programming problems and its application

Yuya Yamakawa

公開日: 2025/9/24

Abstract

This paper presents a twice continuously differentiable penalty function for nonlinear semidefinite programming problems. In some optimization methods, such as penalty methods and augmented Lagrangian methods, their convergence property can be ensured by incorporating a penalty function into them, and hence several types of penalty functions have been proposed. In particular, these functions are designed to apply optimization methods to find first-order stationary points. Meanwhile, in recent years, second-order sequential optimality, such as Approximate Karush-Kuhn-Tucker2 (AKKT2) and Complementarity AKKT2 (CAKKT2) conditions, has been introduced, and the development of methods for such second-order stationary points would be required in future research. However, existing well-known penalty functions have low compatibility with such methods because they are not twice continuously differentiable. In contrast, the proposed function is expected to have a high affinity for methods to find second-order stationary points. To verify the high affinity, we also present a practical penalty method to find points that satisfy the AKKT and CAKKT conditions by exploiting the proposed function and show their convergence properties.

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