DeepQMLP: A Scalable Quantum-Classical Hybrid DeepNeural Network Architecture for Classification
Mahabubul Alam, Swaroop Ghosh

TL;DR
DeepQMLP is a scalable hybrid quantum-classical neural network architecture that leverages shallow quantum circuits to improve classification performance and noise resilience compared to deep quantum models.
Contribution
This paper introduces DeepQMLP, a novel hybrid deep neural network architecture using shallow quantum circuits to enhance scalability and noise robustness in quantum machine learning.
Findings
DeepQMLP achieves up to 25.3% lower loss than deep quantum models.
DeepQMLP exhibits 7.92% higher accuracy under noisy conditions.
Shallow QNN layers improve resilience to quantum hardware noise.
Abstract
Quantum machine learning (QML) is promising for potential speedups and improvements in conventional machine learning (ML) tasks (e.g., classification/regression). The search for ideal QML models is an active research field. This includes identification of efficient classical-to-quantum data encoding scheme, construction of parametric quantum circuits (PQC) with optimal expressivity and entanglement capability, and efficient output decoding scheme to minimize the required number of measurements, to name a few. However, most of the empirical/numerical studies lack a clear path towards scalability. Any potential benefit observed in a simulated environment may diminish in practical applications due to the limitations of noisy quantum hardware (e.g., under decoherence, gate-errors, and crosstalk). We present a scalable quantum-classical hybrid deep neural network (DeepQMLP) architecture…
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Taxonomy
TopicsQuantum Computing Algorithms and Architecture · Quantum Information and Cryptography · Quantum and electron transport phenomena
