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Investigating the Lottery Ticket Hypothesis for Variational Quantum Circuits

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arxiv 2509.11190 v1 pith:AFNAQJRG submitted 2025-09-14 quant-ph cs.AIcs.LG

Investigating the Lottery Ticket Hypothesis for Variational Quantum Circuits

classification quant-ph cs.AIcs.LG
keywords quantumticketvqcslearningmachinewinningbarrencircuits
verification ladder T0 review T1 audit T2 compute T3 formal T4 reserved
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Quantum computing is an emerging field in computer science that has seen considerable progress in recent years, especially in machine learning. By harnessing the principles of quantum physics, it can surpass the limitations of classical algorithms. However, variational quantum circuits (VQCs), which rely on adjustable parameters, often face the barren plateau phenomenon, hindering optimization. The Lottery Ticket Hypothesis (LTH) is a recent concept in classical machine learning that has led to notable improvements in parameter efficiency for neural networks. It states that within a large network, a smaller, more efficient subnetwork, or ''winning ticket,'' can achieve comparable performance, potentially circumventing plateau challenges. In this work, we investigate whether this idea can apply to VQCs. We show that the weak LTH holds for VQCs, revealing winning tickets that retain just 26.0\% of the original parameters. For the strong LTH, where a pruning mask is learned without any training, we discovered a winning ticket in a binary VQC, achieving 100\% accuracy with only 45\% of the weights. These findings indicate that LTH may mitigate barren plateaus by reducing parameter counts while preserving performance, thus enhancing the efficiency of VQCs in quantum machine learning tasks.

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