Back to Search Start Over

Evaluation of parameterized quantum circuits: on the relation between classification accuracy, expressibility, and entangling capability

Authors :
Thomas Hubregtsen
Patrick Stecher
Koen Bertels
Josef Pichlmeier
Publication Year :
2020
Publisher :
Springer International Publishing, 2020.

Abstract

An active area of investigation in the search for quantum advantage is Quantum Machine Learning. Quantum Machine Learning, and Parameterized Quantum Circuits in a hybrid quantum-classical setup in particular, could bring advancements in accuracy by utilizing the high dimensionality of the Hilbert space as feature space. But is the ability of a quantum circuit to uniformly address the Hilbert space a good indicator of classification accuracy? In our work, we use methods and quantifications from prior art to perform a numerical study in order to evaluate the level of correlation. We find a strong correlation between the ability of the circuit to uniformly address the Hilbert space and the achieved classification accuracy for circuits that entail a single embedding layer followed by 1 or 2 circuit designs. This is based on our study encompassing 19 circuits in both 1 and 2 layer configuration, evaluated on 9 datasets of increasing difficulty. Future work will evaluate if this holds for different circuit designs.<br />Comment: Pre-Print

Details

Database :
OpenAIRE
Accession number :
edsair.doi.dedup.....bef9fb7340ad33eed123c4410f651dbe