Accurate and Efficient Quantum Computations of Molecular Properties Using Daubechies Wavelet Molecular Orbitals: A Benchmark Study against Experimental Data
Cheng-Lin Hong, Ting Tsai, Jyh-Pin Chou, Peng-Jen Chen, Pei-Kai Tsai,, Yu-Cheng Chen, En-Jui Kuo, David Srolovitz, Alice Hu, Yuan-Chung Cheng, and, Hsi-Sheng Goan

TL;DR
This study introduces Daubechies wavelet basis functions for quantum computations of molecular properties, achieving high accuracy with minimal qubits, and demonstrates results that align well with experimental data using near-term quantum computers.
Contribution
The paper proposes using Daubechies wavelet basis functions to improve the accuracy of quantum chemistry calculations with fewer qubits, outperforming traditional minimal basis sets.
Findings
Accurate vibrational frequencies for H₂ and LiH match experimental data.
Quantum calculations achieve accuracy comparable to full configuration interaction with reduced resources.
Demonstrates feasibility of quantum predictions aligned with experiments on near-term quantum hardware.
Abstract
Although quantum computation (QC) is regarded as a promising numerical method for computational quantum chemistry, current applications of quantum-chemistry calculations on quantum computers are limited to small molecules. This limitation can be ascribed to technical problems in building and manipulating more qubits and the associated complicated operations of quantum gates in a quantum circuit when the size of the molecular system becomes large. As a result, reducing the number of required qubits is necessary to make QC practical. Currently, the minimal STO-3G basis set is commonly used in benchmark studies because it requires the minimum number of spin orbitals. Nonetheless, the accuracy of using STO-3G is generally low and thus cannot provide useful predictions. We propose to adopt Daubechies wavelet functions as an accurate and efficient method for QCs of molecular electronic…
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