Phil McMinn

h-index6
2papers

2 Papers

LGApr 23, 2025
QAOA-PCA: Enhancing Efficiency in the Quantum Approximate Optimization Algorithm via Principal Component Analysis

Owain Parry, Phil McMinn

The Quantum Approximate Optimization Algorithm (QAOA) is a promising variational algorithm for solving combinatorial optimization problems on near-term devices. However, as the number of layers in a QAOA circuit increases, which is correlated with the quality of the solution, the number of parameters to optimize grows linearly. This results in more iterations required by the classical optimizer, which results in an increasing computational burden as more circuit executions are needed. To mitigate this issue, we introduce QAOA-PCA, a novel reparameterization technique that employs Principal Component Analysis (PCA) to reduce the dimensionality of the QAOA parameter space. By extracting principal components from optimized parameters of smaller problem instances, QAOA-PCA facilitates efficient optimization with fewer parameters on larger instances. Our empirical evaluation on the prominent MaxCut problem demonstrates that QAOA-PCA consistently requires fewer iterations than standard QAOA, achieving substantial efficiency gains. While this comes at the cost of a slight reduction in approximation ratio compared to QAOA with the same number of layers, QAOA-PCA almost always outperforms standard QAOA when matched by parameter count. QAOA-PCA strikes a favorable balance between efficiency and performance, reducing optimization overhead without significantly compromising solution quality.

CYFeb 12, 2021
Gradeer: An Open-Source Modular Hybrid Grader

Benjamin Clegg, Maria-Cruz Villa-Uriol, Phil McMinn et al.

Automated assessment has been shown to greatly simplify the process of assessing students' programs. However, manual assessment still offers benefits to both students and tutors. We introduce Gradeer, a hybrid assessment tool, which allows tutors to leverage the advantages of both automated and manual assessment. The tool features a modular design, allowing new grading functionality to be added. Gradeer directly assists manual grading, by automatically loading code inspectors, running students' programs, and allowing grading to be stopped and resumed in place at a later time. We used Gradeer to assess an end of year assignment for an introductory Java programming course, and found that its hybrid approach offers several benefits.