Quantum Scientific Computation and Quantum Artificial Intelligence
Organizer:
Jin-Peng Liu 刘锦鹏 (YMSC)
Speaker:
Yanqiao Wang 王彦桥 (Tsinghua University)
Time:
Wed., 17:15-18:15, May 13, 2026
Venue:
Ningzhai 204
Tencent meeting: 523-5882-8284
Title:
Sign-Embedding Quantum Algorithms for Matrix Equations and Matrix Functions
Abstract:
Matrix equations and matrix functions naturally produce operator outputs, making them important for quantum linear algebra beyond state preparation. We will present a sign-embedding framework that represents a range of such targets through the half-plane matrix sign of structured augmented matrices.
Combined with a logarithmic-sinc rational approximation, scaled multiplexing, and nodewise rebalancing, this approach gives block-encoding algorithms for Sylvester equations, generalized Lyapunov equations, matrix square roots and inverse square roots, matrix geometric means, and continuous-time algebraic Riccati equations. The framework applies beyond normal or diagonalizable inputs through field-of-values gap and strip-resolvent conditions, and provides a unified route to quantum algorithms for structured matrix problems.
Reference: Yanqiao Wang and Jin Peng Liu. Sign Embedding Quantum Algorithms for Matrix Equations and Matrix Functions https://arxiv.org/abs/2604.25333
Bio:
Yanqiao Wang is a Ph.D. student at Qiuzhen College, Tsinghua University, supervised by Prof. Jin-Peng Liu (YMSC) and Prof. Yang Liu (Institute for AI Industry Research).