A fundamental algorithm for data analytics at the edge of wireless networks is distributed principal component analysis (DPCA), which finds the most important information embedded in a distributed high-dimensional dataset by distributed computation of a reduced-dimension data subspace, called principal components (PCs). In this paper, to support one-shot DPCA in wireless systems, we propose a framework of analog MIMO transmission featuring the uncoded analog transmission of local PCs for estimating the global PCs. To cope with channel distortion and noise, two maximum-likelihood (global) PC estimators are presented corresponding to the cases with and without receive channel state information (CSI). The first design, termed coherent PC estim...
Abstract. This paper considers dimensionality reduction in large decentralized networks with limited...
Journal PaperWe consider the estimation of channel parameters for code-division multiple access (CDM...
We study wireless collaborative machine learning (ML), where mobile edge devices, each with its own ...
A fundamental algorithm for data analytics at the edge of wireless networks is distributed principal...
Most of the current body of coding theory research has been dedicated to constructing codes in discr...
Abstract-Among the various approaches recently proposed for blind estimation of wideband multiple-in...
Massive multiple-input multiple-output (MIMO) is a promising technology for next generation communic...
Massive multiple-input multiple-output (MIMO) is becoming a key technology for future 5G cellular ne...
textThe coding and feedback inaccuracies of the channel state information (CSI) in limited feedback ...
International audienceRecent standards for wireless networks introduced spatial and frequency divers...
In 5G and beyond radios, the increased bandwidth, the fast-changing waveform scenarios, and the oper...
In a MIMO system, a transmitter with perfect knowledge of the underlying channel state information (...
Analog function computation utilizes the superposition property of multi-access channel (MAC) to com...
A low-complexity semi-blind scheme is proposed for joint channel estimation and data detection on sp...
Distributed massive MIMO (DM-MIMO) systems are a key enabler to improve the energy efficiency (EE) i...
Abstract. This paper considers dimensionality reduction in large decentralized networks with limited...
Journal PaperWe consider the estimation of channel parameters for code-division multiple access (CDM...
We study wireless collaborative machine learning (ML), where mobile edge devices, each with its own ...
A fundamental algorithm for data analytics at the edge of wireless networks is distributed principal...
Most of the current body of coding theory research has been dedicated to constructing codes in discr...
Abstract-Among the various approaches recently proposed for blind estimation of wideband multiple-in...
Massive multiple-input multiple-output (MIMO) is a promising technology for next generation communic...
Massive multiple-input multiple-output (MIMO) is becoming a key technology for future 5G cellular ne...
textThe coding and feedback inaccuracies of the channel state information (CSI) in limited feedback ...
International audienceRecent standards for wireless networks introduced spatial and frequency divers...
In 5G and beyond radios, the increased bandwidth, the fast-changing waveform scenarios, and the oper...
In a MIMO system, a transmitter with perfect knowledge of the underlying channel state information (...
Analog function computation utilizes the superposition property of multi-access channel (MAC) to com...
A low-complexity semi-blind scheme is proposed for joint channel estimation and data detection on sp...
Distributed massive MIMO (DM-MIMO) systems are a key enabler to improve the energy efficiency (EE) i...
Abstract. This paper considers dimensionality reduction in large decentralized networks with limited...
Journal PaperWe consider the estimation of channel parameters for code-division multiple access (CDM...
We study wireless collaborative machine learning (ML), where mobile edge devices, each with its own ...