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Colloquium: Machine learning in nuclear physics
Advances in machine learning methods provide tools that have broad applicability in
scientific research. These techniques are being applied across the diversity of nuclear …
scientific research. These techniques are being applied across the diversity of nuclear …
A high-bias, low-variance introduction to machine learning for physicists
Abstract Machine Learning (ML) is one of the most exciting and dynamic areas of modern
research and application. The purpose of this review is to provide an introduction to the core …
research and application. The purpose of this review is to provide an introduction to the core …
Identifying topological order through unsupervised machine learning
The Landau description of phase transitions relies on the identification of a local order
parameter that indicates the onset of a symmetry-breaking phase. In contrast, topological …
parameter that indicates the onset of a symmetry-breaking phase. In contrast, topological …
Scalable and flexible classical shadow tomography with tensor networks
Classical shadow tomography is a powerful randomized measurement protocol for
predicting many properties of a quantum state with few measurements. Two classical …
predicting many properties of a quantum state with few measurements. Two classical …
Classical shadow tomography with locally scrambled quantum dynamics
We generalize the classical shadow tomography scheme to a broad class of finite-depth or
finite-time local unitary ensembles, known as locally scrambled quantum dynamics, where …
finite-time local unitary ensembles, known as locally scrambled quantum dynamics, where …
Entanglement transitions from holographic random tensor networks
We introduce a class of phase transitions separating quantum states with different
entanglement features. An example of such an “entanglement phase transition” is provided …
entanglement features. An example of such an “entanglement phase transition” is provided …
Limitations of linear cross-entropy as a measure for quantum advantage
Demonstrating quantum advantage requires experimental implementation of a
computational task that is hard to achieve using state-of-the-art classical systems. One …
computational task that is hard to achieve using state-of-the-art classical systems. One …
How to use neural networks to investigate quantum many-body physics
Over the past few years, machine learning has emerged as a powerful computational tool to
tackle complex problems in a broad range of scientific disciplines. In particular, artificial …
tackle complex problems in a broad range of scientific disciplines. In particular, artificial …
Quantum adversarial machine learning
Adversarial machine learning is an emerging field that focuses on studying vulnerabilities of
machine learning approaches in adversarial settings and develo** techniques …
machine learning approaches in adversarial settings and develo** techniques …
Neural network renormalization group
We present a variational renormalization group (RG) approach based on a reversible
generative model with hierarchical architecture. The model performs hierarchical change-of …
generative model with hierarchical architecture. The model performs hierarchical change-of …