[HTML][HTML] Optimization of 4D/3D printing via machine learning: A systematic review
This systematic review explores the integration of 4D/3D printing technologies with machine
learning, sha** a new era of manufacturing innovation. The analysis covers a wide range …
learning, sha** a new era of manufacturing innovation. The analysis covers a wide range …
[PDF][PDF] Enhancing cyber security using quantum computing and artificial intelligence: A review
S Singh, D Kumar - algorithms, 2024 - researchgate.net
This article examines the transformative potential of quantum computing in addressing the
growing challenge of cyber threats. With traditional encryption methods becoming …
growing challenge of cyber threats. With traditional encryption methods becoming …
Quantum convolutional neural networks are (effectively) classically simulable
Quantum Convolutional Neural Networks (QCNNs) are widely regarded as a promising
model for Quantum Machine Learning (QML). In this work we tie their heuristic success to …
model for Quantum Machine Learning (QML). In this work we tie their heuristic success to …
Classically estimating observables of noiseless quantum circuits
We present a classical algorithm for estimating expectation values of arbitrary observables
on most quantum circuits across all circuit architectures and depths, including those with all …
on most quantum circuits across all circuit architectures and depths, including those with all …
[PDF][PDF] Quantum machine learning: exploring quantum algorithms for enhancing deep learning models
Quantum Machine Learning: Exploring Quantum Algorithms for Enhancing Deep Learning
Models Page 1 International Journal of Advanced Engineering Research and Science (IJAERS) …
Models Page 1 International Journal of Advanced Engineering Research and Science (IJAERS) …
Generalization of quantum machine learning models using quantum fisher information metric
T Haug, MS Kim - Physical Review Letters, 2024 - APS
Generalization is the ability of machine learning models to make accurate predictions on
new data by learning from training data. However, understanding generalization of quantum …
new data by learning from training data. However, understanding generalization of quantum …
Information-theoretic generalization bounds for learning from quantum data
Learning tasks play an increasingly prominent role in quantum information and computation.
They range from fundamental problems such as state discrimination and metrology over the …
They range from fundamental problems such as state discrimination and metrology over the …
What can we learn from quantum convolutional neural networks?
Quantum machine learning (QML) shows promise for analyzing quantum data. A notable
example is the use of quantum convolutional neural networks (QCNNs), implemented as …
example is the use of quantum convolutional neural networks (QCNNs), implemented as …
QSAN: A near-term achievable quantum self-attention network
Self-attention mechanism (SAM) is good at capturing the intrinsic connection between
features to dramatically boost the performance of machine learning models. Nevertheless …
features to dramatically boost the performance of machine learning models. Nevertheless …
Training robust and generalizable quantum models
Adversarial robustness and generalization are both crucial properties of reliable machine
learning models. In this paper, we study these properties in the context of quantum machine …
learning models. In this paper, we study these properties in the context of quantum machine …