This paper proposes a novel multivariate definition of statistical dependence using a functional methodology inspired by Alfred R\'enyi. We define a new symmetric and self-adjoint cross density kernel through a recursive bidirectional statistical mapping between conditional densities of continuous random processes, which estimates their statistical dependence. Therefore, the kernel eigenspectrum is proposed as a new multivariate statistical dependence measure, and the formulation requires fewer assumptions about the data generation model than current methods. The measure can also be estimated from realizations. The proposed functional maximum correlation algorithm (FMCA) is applied to a learning architecture with two multivariate neural net...
A fundamental problem in statistics is the estimation of dependence between random variables. While ...
We discuss reproducing kernel Hilbert space (RKHS)-based measures of statistical dependence, with em...
Measurements of systems taken along a continuous functional dimension, such as time or space, are ub...
We propose a new measure of conditional dependence of random variables, based on normalized cross-co...
We describe a method for causal inference that measures the strength of statistical dependence by th...
In this doctoral dissertation we will investigate dependence structures in three different cases. ...
We discuss reproducing kernel Hilbert space (RKHS)-based measures of statistical dependence, with em...
A fundamental problem in neuroscience is determining whether or not particular neural signals are de...
Through computer simulations, we research several different measures of dependence, including Pearso...
© 2017, Springer-Verlag Berlin Heidelberg. Measures of statistical dependence between random variabl...
In nature, we can find multivariate systems that contain non-monotone dependencies. Examples of thes...
<p>The paper presents a new copula based method for measuring dependence between random variables. O...
Measuring the dependence of data plays a central role in statistics and machine learning. In this wo...
My PhD research focuses on measuring and testing mutual dependence and conditional mean dependence, ...
The paper presents a new copula based method for measuring dependence between random variables. Our ...
A fundamental problem in statistics is the estimation of dependence between random variables. While ...
We discuss reproducing kernel Hilbert space (RKHS)-based measures of statistical dependence, with em...
Measurements of systems taken along a continuous functional dimension, such as time or space, are ub...
We propose a new measure of conditional dependence of random variables, based on normalized cross-co...
We describe a method for causal inference that measures the strength of statistical dependence by th...
In this doctoral dissertation we will investigate dependence structures in three different cases. ...
We discuss reproducing kernel Hilbert space (RKHS)-based measures of statistical dependence, with em...
A fundamental problem in neuroscience is determining whether or not particular neural signals are de...
Through computer simulations, we research several different measures of dependence, including Pearso...
© 2017, Springer-Verlag Berlin Heidelberg. Measures of statistical dependence between random variabl...
In nature, we can find multivariate systems that contain non-monotone dependencies. Examples of thes...
<p>The paper presents a new copula based method for measuring dependence between random variables. O...
Measuring the dependence of data plays a central role in statistics and machine learning. In this wo...
My PhD research focuses on measuring and testing mutual dependence and conditional mean dependence, ...
The paper presents a new copula based method for measuring dependence between random variables. Our ...
A fundamental problem in statistics is the estimation of dependence between random variables. While ...
We discuss reproducing kernel Hilbert space (RKHS)-based measures of statistical dependence, with em...
Measurements of systems taken along a continuous functional dimension, such as time or space, are ub...