As an important resource to realize quantum information, quantum correlation displays different behaviors, freezing phenomenon and nonlocalization, which are dissimilar to the entanglement and classical correlation, respectively. In our setup, the ordering of the value of quantum correlation is represented for different quantization methods by considering an open quantum system scenario. The machine learning method (neural network method) is then adopted to train for the construction of a bridge between the Rényi discord $(\alpha=2)$ and the geometric discord (Bures distance) for X form states. Our results clearly demonstrate that the machine learning method is useful for studying the differences and commonalities of different quantizing m...
We provide a historical perspective of how the notion of correlations has evolved within quantum phy...
Physical principles underlying machine learning analysis of quantum gas microscopy data are not well...
Within the past decade, machine learning algorithms have been proposed as a po-tential solution to a...
By today, we understand that quantum correlations lie at the heart of quantum physics, and a whole f...
By considering an arbitrary two-qubit state, it is shown that the Fisher information is intrinsicall...
We give a pedagogical introduction to quantum discord and discuss the problem of separation of total...
International audienceWe investigate and compare three distinguished geometric measures of bipartite...
The characterization of many-body correlations provides a powerful tool for analyzing correlated qua...
We investigate and compare three distinguished geometric measures of bipartite quantum correlations ...
Machine learning techniques have been successfully applied to classifying an extensive range of phen...
Nonclassical correlations beyond entanglement might provide a resource in quantum information tasks,...
Tensor networks have emerged as promising tools for machine learning, inspired by their widespread u...
Abstract. We propose a modified metric based on the Hilbert-Schmidt norm and adopt it to define a re...
Entanglement has always been regarded as a useful resource for pure state computation. In spite of s...
Quantum correlations represent a fundamental tool for studies ranging from basic science to quantum ...
We provide a historical perspective of how the notion of correlations has evolved within quantum phy...
Physical principles underlying machine learning analysis of quantum gas microscopy data are not well...
Within the past decade, machine learning algorithms have been proposed as a po-tential solution to a...
By today, we understand that quantum correlations lie at the heart of quantum physics, and a whole f...
By considering an arbitrary two-qubit state, it is shown that the Fisher information is intrinsicall...
We give a pedagogical introduction to quantum discord and discuss the problem of separation of total...
International audienceWe investigate and compare three distinguished geometric measures of bipartite...
The characterization of many-body correlations provides a powerful tool for analyzing correlated qua...
We investigate and compare three distinguished geometric measures of bipartite quantum correlations ...
Machine learning techniques have been successfully applied to classifying an extensive range of phen...
Nonclassical correlations beyond entanglement might provide a resource in quantum information tasks,...
Tensor networks have emerged as promising tools for machine learning, inspired by their widespread u...
Abstract. We propose a modified metric based on the Hilbert-Schmidt norm and adopt it to define a re...
Entanglement has always been regarded as a useful resource for pure state computation. In spite of s...
Quantum correlations represent a fundamental tool for studies ranging from basic science to quantum ...
We provide a historical perspective of how the notion of correlations has evolved within quantum phy...
Physical principles underlying machine learning analysis of quantum gas microscopy data are not well...
Within the past decade, machine learning algorithms have been proposed as a po-tential solution to a...