Quantum-enhanced causal discovery for a small number of samples
Yu Terada, Ken Arai, Yu Tanaka, Yota Maeda, Hiroshi Ueno, Hiroyuki Tezuka

TL;DR
This paper introduces a quantum algorithm for causal discovery that outperforms classical methods, especially with small sample sizes, by leveraging quantum circuits and kernel methods to improve accuracy and reduce false positives.
Contribution
The study presents a novel quantum causal discovery algorithm that operates without assumptions on model structure and enhances performance in small-sample scenarios.
Findings
Quantum algorithm outperforms classical methods with small samples.
Kernel Target Alignment improves hyperparameter selection.
Validated on real-world datasets like housing prices and health data.
Abstract
The discovery of causal relations from observed data has attracted significant interest from disciplines such as economics, social sciences, and biology. In practical applications, considerable knowledge of the underlying systems is often unavailable, and real data are usually associated with nonlinear causal structures, which makes the direct use of most conventional causality analysis methods difficult. This study proposes a novel quantum Peter-Clark (qPC) algorithm for causal discovery that does not require any assumptions about the underlying model structures. Based on conditional independence tests in a class of reproducing kernel Hilbert spaces characterized by quantum circuits, the proposed algorithm can explore causal relations from the observed data drawn from arbitrary distributions. We conducted systematic experiments on fundamental graphs of causal structures, demonstrating…
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