A Versatile Variational Quantum Kernel Framework for Non-Trivial Classification
About
Quantum kernel methods are a promising branch of quantum machine learning, yet their effectiveness on diverse, high-dimensional, real-world data remains unverified. Current research has largely been limited to low-dimensional or synthetic datasets, preventing a thorough evaluation of their potential. To address this gap, we developed an algorithmic framework for variational quantum kernels utilizing resource-efficient ans\"atze for complex classification tasks and introduced a parameter scaling technique to accelerate convergence. We conducted a comprehensive benchmark of this framework on eight challenging, real-world and high-dimensional datasets covering tabular, image, time series, and graph data. Our results show that the proposed quantum kernels demonstrate competitive classification accuracy compared to standard classical kernels in classical simulation, such as the radial basis function (RBF) kernel. This work demonstrates that properly designed quantum kernels can function as versatile, high-performance tools, laying a foundation for quantum-enhanced applications in real-world machine learning. Further research is needed to fully assess the practical performance of quantum methods.
Related benchmarks
| Task | Dataset | Result | Rank | |
|---|---|---|---|---|
| Graph Classification | PROTEINS | Accuracy78.85 | 742 | |
| Graph Classification | MUTAG | Accuracy91.49 | 697 | |
| Image Classification | Fashion Tshirt Shirt | Accuracy84 | 4 | |
| Tabular Classification | Higgs Boson | Accuracy81.44 | 4 | |
| Tabular Classification | QSAR Biodegradation | Accuracy0.8939 | 4 | |
| Tabular Classification | TCGA LGG | Accuracy95.31 | 4 | |
| Time-series classification | PhysioNet 2017 | Accuracy78.86 | 4 | |
| Time-series classification | SEED P12S1 | Accuracy87.8 | 4 |