Compositional Quantum Heuristics for Max-Clique Detection
Tiffany Duneau, Colin Krawchuk, Anna Pearson

TL;DR
This paper introduces a compositional approach to quantum machine learning for max-clique detection, using symmetry-based loss functions and recursive heuristics to improve trainability and scalability.
Contribution
It proposes a novel framework combining group-invariant loss functions with compositional quantum models, enhancing trainability and generalization in quantum graph neural networks.
Findings
Models exhibit improved gradient behaviour due to symmetry bias
Trained models generalize to larger, complex graphs
Recursive hybrid quantum-classical heuristics improve inference accuracy
Abstract
Quantum machine learning holds the promise of combining the success of classical machine learning methods with the power of quantum computing, however one of the largest obstacles facing the field is the problem of barren plateaus. Parameterised quantum circuits offer a flexible framework for developing quantum machine learning models, but their practicality is constrained by a trade-off between trainability and classical simulability. In general, circuits that are sufficiently expressive to model complex behaviour often exhibit barren plateaus, where gradients vanish and optimisation fails. In this work we investigate a compositional approach to mitigate this trade-off by assembling larger quantum models from smaller subcomponents. To ensure trainability of these subcomponents, we describe a framework for constructing group-invariant loss functions, which introduce symmetry-induced…
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