We are living in the era of "Big Data", an era characterized by a voluminous amount of available data. Such amount is mainly due to the continuing advances in the computational capabilities for capturing, storing, transmitting and processing data. However, it is not always the volume of data that matters, but rather the "relevant" information that resides in it. Exactly 70 years ago, Claude Shannon, the father of information theory, was able to quantify the amount of information in a communication scenario based on a probabilistic model of the data. It turns out that Shannon's theory can be adapted to various probability-based information processing fields, ranging from coding theory to machine learning. The computation of some information ...
An efficient Bayesian inference method for problems that can be mapped onto dense graphs is presente...
An efficient Bayesian inference method for problems that can be mapped onto dense graphs is presente...
An efficient Bayesian inference method for problems that can be mapped onto dense graphs is presente...
Datasets come in a variety of forms and from a broad range of different applications. Typically, the...
Datasets come in a variety of forms and from a broad range of different applications. Typically, the...
Datasets come in a variety of forms and from a broad range of different applications. Typically, the...
Factorizing low-rank matrices is a problem with many applications in machine learning and statistics...
Factorizing low-rank matrices is a problem with many applications in machine learning and statistics...
Factorizing low-rank matrices is a problem with many applications in machine learning and statistics...
<p>The concept of sparseness is harnessed to learn a low dimensional representation of high dimensio...
High-dimensional probability theory bears vital importance in the mathematical foundation ...
The past decade saw an intensification of the deluge of data available to learning algorithms, which...
The past decade saw an intensification of the deluge of data available to learning algorithms, which...
The past decade saw an intensification of the deluge of data available to learning algorithms, which...
This thesis deals with the asymptotic analysis of coding systems based on sparse graph codes. The go...
An efficient Bayesian inference method for problems that can be mapped onto dense graphs is presente...
An efficient Bayesian inference method for problems that can be mapped onto dense graphs is presente...
An efficient Bayesian inference method for problems that can be mapped onto dense graphs is presente...
Datasets come in a variety of forms and from a broad range of different applications. Typically, the...
Datasets come in a variety of forms and from a broad range of different applications. Typically, the...
Datasets come in a variety of forms and from a broad range of different applications. Typically, the...
Factorizing low-rank matrices is a problem with many applications in machine learning and statistics...
Factorizing low-rank matrices is a problem with many applications in machine learning and statistics...
Factorizing low-rank matrices is a problem with many applications in machine learning and statistics...
<p>The concept of sparseness is harnessed to learn a low dimensional representation of high dimensio...
High-dimensional probability theory bears vital importance in the mathematical foundation ...
The past decade saw an intensification of the deluge of data available to learning algorithms, which...
The past decade saw an intensification of the deluge of data available to learning algorithms, which...
The past decade saw an intensification of the deluge of data available to learning algorithms, which...
This thesis deals with the asymptotic analysis of coding systems based on sparse graph codes. The go...
An efficient Bayesian inference method for problems that can be mapped onto dense graphs is presente...
An efficient Bayesian inference method for problems that can be mapped onto dense graphs is presente...
An efficient Bayesian inference method for problems that can be mapped onto dense graphs is presente...