Quantifying Gate Contribution in Quantum Feature Maps for Scalable Circuit Optimization
arXiv cs.LG / 3/23/2026
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Key Points
- Introduces Gate Assessment and Threshold Evaluation (GATE) as a circuit optimization method that uses a gate significance index to quantify each gate's relevance by combining fidelity, entanglement, and sensitivity.
- The index is formulated for both simulator/emulator environments and real hardware, with quantities estimated from measurements and auxiliary circuits on hardware.
- The approach iteratively scans a threshold range to remove low-contribution gates, generating optimized quantum machine learning models and ranking them by accuracy, runtime, and a balanced performance criterion.
- Evaluations on PegasosQSVM and Quantum Neural Network across three execution scenarios—noise-free simulation, IBM-based noisy emulation, and real IBM hardware—show reductions in circuit size and runtime with preserved or improved predictive accuracy, especially at intermediate thresholds.
- The study analyzes the structural impact of gate removal, compatibility with noise-mitigation techniques, and the scalability of index computation using density matrices, matrix product states, tensor networks, and real devices.
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