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  4. Feedback and Common Information: Bounds and Capacity for Gaussian Networks
 
doctoral thesis

Feedback and Common Information: Bounds and Capacity for Gaussian Networks

Sula, Erixhen  
2021

Network information theory studies the communication of information in a network and considers its fundamental limits. Motivating from the extensive presence of the networks in the daily life, the thesis studies the fundamental limits of particular networks including channel coding such as Gaussian multiple access channel with feedback and source coding such as lossy Gaussian Gray-Wyner network.

On one part, we establish the sum-Capacity of the Gaussian multiple-access channel with feedback. The converse bounds that are derived from the dependence-balance argument of Hekstra and Willems meet the achievable scheme introduced by Kramer. Even though the problem is not convex, the factorization of lower convex envelope method that is introduced by Geng and Nair, combined with a Gaussian property are invoked to compute the sum-Capacity. Additionally, we characterize the rate region of lossy Gaussian Gray-Wyner network for symmetric distortion. The problem is not convex, thus the method of factorization of lower convex envelope is used to show the Gaussian optimality of the auxiliaries. Both of the networks, are a long-standing open problem.

On the other part, we consider the common information that is introduced by Wyner and the natural relaxation of Wyner's common information. Wyner's common information is a measure that quantifies and assesses the commonality between two random variables. The operational significance of the newly introduced quantity is in Gray-Wyner network. Thus, computing the relaxed Wyner's common information is directly connected with computing the rate region in Gray-Wyner network. We derive a lower bound to Wyner's common information for any given source. The bound meets the exact Wyner's common information for sources that are expressed as sum of a common random variable and Gaussian noises. Moreover, we derive an upper bound on an extended variant of information bottleneck.

Finally, we use Wyner's common information and its relaxation as a tool to extract common information between datasets. Thus, we introduce a novel procedure to construct features from data, referred to as Common Information Components Analysis (CICA). We establish that in the case of Gaussian statistics, CICA precisely reduces to Canonical Correlation Analysis (CCA), where the relaxing parameter determines the number of CCA components that are extracted. In this sense, we establish a novel rigorous connection between information measures and CCA, and CICA is a strict generalization of the latter. Moreover, we show that CICA has several desirable features, including a natural extension to beyond just two data sets.

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Type
doctoral thesis
DOI
10.5075/epfl-thesis-8094
Author(s)
Sula, Erixhen  
Advisors
Gastpar, Michael Christoph  
Jury

Prof. Emre Telatar (président) ; Prof. Michael Christoph Gastpar (directeur de thèse) ; Prof. Bixio Rimoldi, Prof. Gerhard Kramer, Prof. Michèle Wigger (rapporteurs)

Date Issued

2021

Publisher

EPFL

Publisher place

Lausanne

Public defense year

2021-05-21

Thesis number

8094

Total of pages

127

Subjects

multiple access channel

•

feedback

•

Gray-Wyner network

•

Wyner's common information

•

common information component analysis

•

canonical correlation analysis

•

Gaussian network

•

noise

EPFL units
LINX  
Faculty
IC  
School
IINFCOM  
Doctoral School
EDIC  
Available on Infoscience
May 18, 2021
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/178064
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