LGETMar 27, 2024

On Optimizing Hyperparameters for Quantum Neural Networks

arXiv:2403.18579v17 citationsh-index: 40QCE
Originality Synthesis-oriented
AI Analysis

This work addresses hyperparameter optimization for quantum machine learning models, offering incremental improvements to enhance efficiency and performance in a domain-specific context.

The study tackled the problem of hyperparameter tuning for Quantum Neural Networks, which is critical for trainability and performance, by identifying impactful hyperparameters and providing performance data and selection suggestions.

The increasing capabilities of Machine Learning (ML) models go hand in hand with an immense amount of data and computational power required for training. Therefore, training is usually outsourced into HPC facilities, where we have started to experience limits in scaling conventional HPC hardware, as theorized by Moore's law. Despite heavy parallelization and optimization efforts, current state-of-the-art ML models require weeks for training, which is associated with an enormous $CO_2$ footprint. Quantum Computing, and specifically Quantum Machine Learning (QML), can offer significant theoretical speed-ups and enhanced expressive power. However, training QML models requires tuning various hyperparameters, which is a nontrivial task and suboptimal choices can highly affect the trainability and performance of the models. In this study, we identify the most impactful hyperparameters and collect data about the performance of QML models. We compare different configurations and provide researchers with performance data and concrete suggestions for hyperparameter selection.

Code Implementations1 repo
Foundations

The foundational work for this paper's niche, ranked by how specifically the neighbourhood builds on it — not by global fame.

Your Notes