194 research outputs found
Linear Information Coupling Problems
Many network information theory problems face the similar difficulty of
single letterization. We argue that this is due to the lack of a geometric
structure on the space of probability distribution. In this paper, we develop
such a structure by assuming that the distributions of interest are close to
each other. Under this assumption, the K-L divergence is reduced to the squared
Euclidean metric in an Euclidean space. Moreover, we construct the notion of
coordinate and inner product, which will facilitate solving communication
problems. We will also present the application of this approach to the
point-to-point channel and the general broadcast channel, which demonstrates
how our technique simplifies information theory problems.Comment: To appear, IEEE International Symposium on Information Theory, July,
201
The Linear Information Coupling Problems
Many network information theory problems face the similar difficulty of
single-letterization. We argue that this is due to the lack of a geometric
structure on the space of probability distribution. In this paper, we develop
such a structure by assuming that the distributions of interest are close to
each other. Under this assumption, the K-L divergence is reduced to the squared
Euclidean metric in an Euclidean space. In addition, we construct the notion of
coordinate and inner product, which will facilitate solving communication
problems. We will present the application of this approach to the
point-to-point channel, general broadcast channel, and the multiple access
channel (MAC) with the common source. It can be shown that with this approach,
information theory problems, such as the single-letterization, can be reduced
to some linear algebra problems. Moreover, we show that for the general
broadcast channel, transmitting the common message to receivers can be
formulated as the trade-off between linear systems. We also provide an example
to visualize this trade-off in a geometric way. Finally, for the MAC with the
common source, we observe a coherent combining gain due to the cooperation
between transmitters, and this gain can be quantified by applying our
technique.Comment: 27 pages, submitted to IEEE Transactions on Information Theor
Communication Theoretic Data Analytics
Widespread use of the Internet and social networks invokes the generation of
big data, which is proving to be useful in a number of applications. To deal
with explosively growing amounts of data, data analytics has emerged as a
critical technology related to computing, signal processing, and information
networking. In this paper, a formalism is considered in which data is modeled
as a generalized social network and communication theory and information theory
are thereby extended to data analytics. First, the creation of an equalizer to
optimize information transfer between two data variables is considered, and
financial data is used to demonstrate the advantages. Then, an information
coupling approach based on information geometry is applied for dimensionality
reduction, with a pattern recognition example to illustrate the effectiveness.
These initial trials suggest the potential of communication theoretic data
analytics for a wide range of applications.Comment: Published in IEEE Journal on Selected Areas in Communications, Jan.
201
On the expected number of facets for the convex hull of samples
This paper studies the convex hull of -dimensional samples i.i.d.
generated from spherically symmetric distributions. Specifically, we derive a
complete integration formula for the expected facet number of the convex hull.
This formula is with respect to the CDF of the radial distribution. As the
number of samples approaches infinity, the integration formula enables us to
obtain the asymptotic value of the expected facet number for three categories
of spherically symmetric distributions. Additionally, the asymptotic result can
be applied to estimating the sample complexity in order that the probability
measure of the convex hull tends to one
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