Received (to be inserted by publisher) Singular Value Decomposition (SVD) is a technique based on linear projection theory, which has been frequently used for data analysis. It constitutes an optimal (in the sense of least squares) decomposition of a matrix in the most relevant directions of the data variance. Usually, this information is used to reduce the dimensionality of the data set in a few principal projection directions, this is called Truncated Singular Value Decomposition (TSVD). In situations where the data is continuously changing the projection might become obsolete. Since the change rate of data can be fast, it is an interesting question whether the TSVD projection of the initial data is reliable. In the case of complex networ...
The last decade has seen resurgence of interest in the modelling of networked phenomena. In 1999, Al...
Real-world large-scale complex networks such as the Internet, social networks and biological network...
The average effective size for three kinds of networks is computed in a random sample (with replacem...
The propagator of a linear model plays a central role in empirical no mal mode and finite-time insta...
This volume is an outgrowth of the 2nd International Workshop on SVD and Signal Processing which was...
A simple model for weighted structured scale-free (WSSF) networks is proposed. The growth dynamics o...
This paper examines the dependence of network performance measures on network size and considers sca...
This book presents a new approach to the analysis of networks, which emphasizes how one can compress...
<p>The panels show the distributions of NCD values on interval in noiseless (left), moderately nois...
Over the last 15 years, singular spectrum analysis (SSA) has proven very successful. It has already ...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Analysis of degree-degree dependencies in complex networks, and their impact on processes on network...
We propose a new algorithm for the computation of a singular value decomposition (SVD) low-rank appr...
We introduce and study the spectral evolution model, which characterizes the growth of large network...
Most of the real world complex networks such as the Internet, World Wide Web and collaboration netwo...
The last decade has seen resurgence of interest in the modelling of networked phenomena. In 1999, Al...
Real-world large-scale complex networks such as the Internet, social networks and biological network...
The average effective size for three kinds of networks is computed in a random sample (with replacem...
The propagator of a linear model plays a central role in empirical no mal mode and finite-time insta...
This volume is an outgrowth of the 2nd International Workshop on SVD and Signal Processing which was...
A simple model for weighted structured scale-free (WSSF) networks is proposed. The growth dynamics o...
This paper examines the dependence of network performance measures on network size and considers sca...
This book presents a new approach to the analysis of networks, which emphasizes how one can compress...
<p>The panels show the distributions of NCD values on interval in noiseless (left), moderately nois...
Over the last 15 years, singular spectrum analysis (SSA) has proven very successful. It has already ...
Due to its ease of use, as well as its enormous flexibility in its degree structure, the configurati...
Analysis of degree-degree dependencies in complex networks, and their impact on processes on network...
We propose a new algorithm for the computation of a singular value decomposition (SVD) low-rank appr...
We introduce and study the spectral evolution model, which characterizes the growth of large network...
Most of the real world complex networks such as the Internet, World Wide Web and collaboration netwo...
The last decade has seen resurgence of interest in the modelling of networked phenomena. In 1999, Al...
Real-world large-scale complex networks such as the Internet, social networks and biological network...
The average effective size for three kinds of networks is computed in a random sample (with replacem...