Recently, the importance of analysing data and collecting valuable insight efficiently has been increasing in various fields. Estimating mutual information (MI) plays a critical role to investigate the relationship among multiple random variables with a nonlinear correlation. Particularly, the task to determine whether they are independent or not is called the independence test, whose core subroutine is estimating MI from given data. It is a fundamental tool in statistics and data analysis that can be applied in a wide range of application such as hypothesis testing, causal discovery and more. In this paper, we propose a method for estimating mutual information using the quantum kernel. We investigate the performance under various problem s...
We show that quantum-to-classical channels, i.e., quantum measurements, can be asymptotically simula...
Modeling joint probability distributions is an important task in a wide variety of fields. One popul...
We introduce a new contrast function, the kernel mutual information (KMI), to measure the degree of ...
We postulate the existence of a universal uncertainty relation between the quantum and classical mut...
We postulate the existence of a universal uncertainty relation between the quantum and classical mut...
Quantifying the dependence between two random variables is a fundamental issue in data analysis, and...
We revisit the task of quantum state redistribution in the one-shot setting, and design a protocol f...
We investigate a two-qubit system to understand the relationship between concurrence and mutual info...
Our everyday reality is characterized by objective information$\unicode{x2013}$information that is s...
A variety of new measures of quantum R�nyi mutual information and quantum R�nyi conditional entr...
Mutual information is a general statistical dependency measure which has found applications in repre...
We show that quantum-to-classical channels, i.e., quantum measurements, can be asymptotically simula...
We introduce a new contrast function, the kernel mutual information (KMI), to measure the degree of ...
The integrated information theory is thought to be a key clue towards the theoretical understanding ...
The correlation distance quantifies the statistical independence of two classical or quantum systems...
We show that quantum-to-classical channels, i.e., quantum measurements, can be asymptotically simula...
Modeling joint probability distributions is an important task in a wide variety of fields. One popul...
We introduce a new contrast function, the kernel mutual information (KMI), to measure the degree of ...
We postulate the existence of a universal uncertainty relation between the quantum and classical mut...
We postulate the existence of a universal uncertainty relation between the quantum and classical mut...
Quantifying the dependence between two random variables is a fundamental issue in data analysis, and...
We revisit the task of quantum state redistribution in the one-shot setting, and design a protocol f...
We investigate a two-qubit system to understand the relationship between concurrence and mutual info...
Our everyday reality is characterized by objective information$\unicode{x2013}$information that is s...
A variety of new measures of quantum R�nyi mutual information and quantum R�nyi conditional entr...
Mutual information is a general statistical dependency measure which has found applications in repre...
We show that quantum-to-classical channels, i.e., quantum measurements, can be asymptotically simula...
We introduce a new contrast function, the kernel mutual information (KMI), to measure the degree of ...
The integrated information theory is thought to be a key clue towards the theoretical understanding ...
The correlation distance quantifies the statistical independence of two classical or quantum systems...
We show that quantum-to-classical channels, i.e., quantum measurements, can be asymptotically simula...
Modeling joint probability distributions is an important task in a wide variety of fields. One popul...
We introduce a new contrast function, the kernel mutual information (KMI), to measure the degree of ...