This thesis consists of two parts in both data science and signal processing over graphs. In the first part of this thesis, we aim to solve the problem of graph construction in big data scenario, which is critical for practical tasks, like collaborative filtering in recommender systems, spectral embedding or clustering in learning algorithms. We achieve to accelerate the data-driven graph construction algorithms by relying on an approximation technique for large matrix multiplication, diamond sampling. We show its potential in real problems by extensive experiments. In the second part, we improve the performance of the graph signal reconstructions by exploiting the local properties of graph signals. We propose a node-adaptive regularization...
In this work, we present extensions of the framework of sampling and reconstructing signals with a f...
The goal of this paper is to propose adaptive strategies for distributed learning of signals defined...
The aim of this paper is to propose a least mean squares (LMS) strategy for adaptive estimation of s...
With the explosive growth of information and communication, data is being generated at an unpreceden...
In applications such as social, energy, transportation, sensor, and neuronal networks, big data natu...
<p>A massive amount of data is being generated at an unprecedented level from a diversity of sources...
The goal of this paper is to propose novel strategies for adaptive learning of signals defined over ...
The goal of this paper is to propose novel strategies for adaptive learning of signals defined over ...
In this paper the focus is on sampling and reconstruction of signals supported on nodes of arbitrary...
The emerging eld of signal processing on graph plays a more and more impor-tant role in processing s...
In this paper, we present two localized graph filtering based meth-ods for interpolating graph signa...
Graph signal processing is an emerging paradigm in signal processing which took birth in the search ...
We consider the problem of signal recovery on graphs. Graphs model data with complex structure assig...
The aim of this paper is to propose a least mean squares (LMS) strategy for adaptive estimation of s...
We propose a sampling theory for signals that are supported on either directed or undirected graphs....
In this work, we present extensions of the framework of sampling and reconstructing signals with a f...
The goal of this paper is to propose adaptive strategies for distributed learning of signals defined...
The aim of this paper is to propose a least mean squares (LMS) strategy for adaptive estimation of s...
With the explosive growth of information and communication, data is being generated at an unpreceden...
In applications such as social, energy, transportation, sensor, and neuronal networks, big data natu...
<p>A massive amount of data is being generated at an unprecedented level from a diversity of sources...
The goal of this paper is to propose novel strategies for adaptive learning of signals defined over ...
The goal of this paper is to propose novel strategies for adaptive learning of signals defined over ...
In this paper the focus is on sampling and reconstruction of signals supported on nodes of arbitrary...
The emerging eld of signal processing on graph plays a more and more impor-tant role in processing s...
In this paper, we present two localized graph filtering based meth-ods for interpolating graph signa...
Graph signal processing is an emerging paradigm in signal processing which took birth in the search ...
We consider the problem of signal recovery on graphs. Graphs model data with complex structure assig...
The aim of this paper is to propose a least mean squares (LMS) strategy for adaptive estimation of s...
We propose a sampling theory for signals that are supported on either directed or undirected graphs....
In this work, we present extensions of the framework of sampling and reconstructing signals with a f...
The goal of this paper is to propose adaptive strategies for distributed learning of signals defined...
The aim of this paper is to propose a least mean squares (LMS) strategy for adaptive estimation of s...