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doctoral thesis

Function Computation over Networks : Efficient Information Processing for Cache and Sensor Applications

Wang, Chien-Yi  
2015

This thesis looks at efficient information processing for two network applications: content delivery with caching and collecting summary statistics in wireless sensor networks. Both applications are studied under the same paradigm: function computation over networks, where distributed source nodes cooperatively communicate some functions of individual observations to one or multiple destinations. One approach that always works is to convey all observations and then let the destinations compute the desired functions by themselves. However, if the available communication resources are limited, then revealing less unwanted information becomes critical. Centered on this goal, this thesis develops new coding schemes using information-theoretic tools.

The first part of this thesis focuses on content delivery with caching. Caching is a technique that facilitates reallocation of communication resources in order to avoid network congestion during peak-traffic times. An information-theoretic model, termed sequential coding for computing, is proposed to analyze the potential gains offered by the caching technique. For the single-user case, the proposed framework succeeds in verifying the optimality of some simple caching strategies and in providing guidance towards optimal caching strategies. For the two-user case, five representative subproblems are considered, which draw connections with classic source coding problems including the Gray-Wyner system, successive refinement, and the Kaspi/Heegard-Berger problem. Afterwards, the problem of distributed computing with successive refinement is considered. It is shown that if full data recovery is required in the second stage of successive refinement, then any information acquired in the first stage will be useful later in the second stage.

The second part of this thesis looks at the collection of summary statistics in wireless sensor networks. Summary statistics include arithmetic mean, median, standard deviation, etc, and they belong to the class of symmetric functions. This thesis develops arithmetic computation coding in order to efficiently perform in-network computation for weighted arithmetic sums and symmetric functions. The developed arithmetic computation coding increases the achievable computation rate from $\Theta((\log L)/L)$ to $\Theta(1/\log L)$, where $L$ is the number of sensors. Finally, this thesis demonstrates that interaction among sensors is beneficial for computation of type-threshold functions, e.g., the maximum and the indicator function, and that a non-vanishing computation rate is achievable.

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Type
doctoral thesis
DOI
10.5075/epfl-thesis-6787
Author(s)
Wang, Chien-Yi  
Advisors
Gastpar, Michael Christoph  
Jury

Prof. Bixio Rimoldi (président) ; Prof. Michael Christoph Gastpar (directeur de thèse) ; Prof. Emre Telatar, Prof. Gerhard Kramer, Prof. Young-Han Kim (rapporteurs)

Date Issued

2015

Publisher

EPFL

Publisher place

Lausanne

Public defense year

2015-11-20

Thesis number

6787

Total of pages

122

Subjects

coded caching

•

content delivery networks

•

distributed computing

•

Gaussian multiple access channel

•

information redundancy

•

interactive computation

•

joint source-channel coding

•

multi-terminal source coding

•

wireless sensor networks

EPFL units
LINX  
Faculty
IC  
School
ISC  
Doctoral School
EDIC  
Available on Infoscience
November 9, 2015
Use this identifier to reference this record
https://infoscience.epfl.ch/handle/20.500.14299/120486
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