A review of distributed algorithms for principal component analysis
Principal component analysis (PCA) is a fundamental primitive of many data analysis, array
processing, and machine learning methods. In applications where extremely large arrays of …
processing, and machine learning methods. In applications where extremely large arrays of …
Distributed signal processing for wireless EEG sensor networks
A Bertrand - IEEE transactions on neural systems and …, 2015 - ieeexplore.ieee.org
Inspired by ongoing evolutions in the field of wireless body area networks (WBANs), this
tutorial paper presents a conceptual and exploratory study of wireless …
tutorial paper presents a conceptual and exploratory study of wireless …
Sparsity-promoting sensor selection for non-linear measurement models
The problem of choosing the best subset of sensors that guarantees a certain estimation
performance is referred to as sensor selection. In this paper, we focus on observations that …
performance is referred to as sensor selection. In this paper, we focus on observations that …
[HTML][HTML] Distributed estimation of principal eigenspaces
Principal component analysis (PCA) is fundamental to statistical machine learning. It extracts
latent principal factors that contribute to the most variation of the data. When data are stored …
latent principal factors that contribute to the most variation of the data. When data are stored …
Data-driven distributed local fault detection for large-scale processes based on the GA-regularized canonical correlation analysis
Large-scale processes have become common, and fault detection for such processes is
imperative. This work studies the data-driven distributed local fault detection problem for …
imperative. This work studies the data-driven distributed local fault detection problem for …
Cloud K-SVD: A collaborative dictionary learning algorithm for big, distributed data
This paper studies the problem of data-adaptive representations for big, distributed data. It is
assumed that a number of geographically-distributed, interconnected sites have massive …
assumed that a number of geographically-distributed, interconnected sites have massive …
A secure distributed ledger for transactive energy: The Electron Volt Exchange (EVE) blockchain
The adoption of blockchain for Transactive Energy has gained significant momentum as it
allows mutually non-trusting agents to trade energy services in a trustless energy market …
allows mutually non-trusting agents to trade energy services in a trustless energy market …
Distributed banach-picard iteration: Application to distributed parameter estimation and PCA
F Andrade, MAT Figueiredo… - IEEE Transactions on …, 2023 - ieeexplore.ieee.org
We recently proposed an algorithmic framework, distributed Banach-Picard iteration (DBPI),
allowing a set of agents linked by a communication network to find a fixed point of a map …
allowing a set of agents linked by a communication network to find a fixed point of a map …
Distributed detection and estimation in wireless sensor networks
Wireless sensor networks (WSNs) are becoming more and more a pervasive tool to monitor
a wide range of physical phenomena. The opportunities arising from the many potential …
a wide range of physical phenomena. The opportunities arising from the many potential …
Visual analysis of complex networks for business intelligence with gephi
Platforms which combine data mining algorithms and interactive visualizations play a key
role in the discovery process from complex networks data, eg Web and Online Social …
role in the discovery process from complex networks data, eg Web and Online Social …