KANQAS

Kolmogorov-Arnold Network for Quantum Architecture Search

Journal Article (2024)
Author(s)

Akash Kundu (Polish Academy of Sciences, Quantum Intelligence Alliance, University of Helsinki, Silesian University of Technology)

A. Sarkar (TU Delft - QuTech Advanced Research Centre, Quantum Intelligence Alliance, TU Delft - QCD/Feld Group)

Abhishek Sadhu (Raman Research Institute, International Institute of Information Technology)

Research Group
QCD/Feld Group
DOI related publication
https://doi.org/10.1140/epjqt/s40507-024-00289-z
More Info
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Publication Year
2024
Language
English
Research Group
QCD/Feld Group
Issue number
1
Volume number
11
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Abstract

Quantum architecture Search (QAS) is a promising direction for optimization and automated design of quantum circuits towards quantum advantage. Recent techniques in QAS emphasize Multi-Layer Perceptron (MLP)-based deep Q-networks. However, their interpretability remains challenging due to the large number of learnable parameters and the complexities involved in selecting appropriate activation functions. In this work, to overcome these challenges, we utilize the Kolmogorov-Arnold Network (KAN) in the QAS algorithm, analyzing their efficiency in the task of quantum state preparation and quantum chemistry. In quantum state preparation, our results show that in a noiseless scenario, the probability of success is 2× to 5× higher than MLPs. In noisy environments, KAN outperforms MLPs in fidelity when approximating these states, showcasing its robustness against noise. In tackling quantum chemistry problems, we enhance the recently proposed QAS algorithm by integrating curriculum reinforcement learning with a KAN structure. This facilitates a more efficient design of parameterized quantum circuits by reducing the number of required 2-qubit gates and circuit depth. Further investigation reveals that KAN requires a significantly smaller number of learnable parameters compared to MLPs; however, the average time of executing each episode for KAN is higher.