77 research outputs found
From Boma to Boomtown: Extraction, Place, and Politics in Solwezi, Zambia
Mershon Center for International Security Studies Graduate Student Research 2007-08In 2003, the northwestern province of Zambia witnessed the opening of the Kanshanshi and Lumwana copper mines. These mines employ more than 7,000 workers, most of who live in the nearby town of Solwezi — a previously small boma, or administrative town.
Rohit Negi's dissertation explores Solwezi's transformation as a mining town, providing a valuable case study of social and political change brought about by economic development
The Sensing Capacity of Sensor Networks
This paper demonstrates fundamental limits of sensor networks for detection
problems where the number of hypotheses is exponentially large. Such problems
characterize many important applications including detection and classification
of targets in a geographical area using a network of sensors, and detecting
complex substances with a chemical sensor array. We refer to such applications
as largescale detection problems. Using the insight that these problems share
fundamental similarities with the problem of communicating over a noisy
channel, we define a quantity called the sensing capacity and lower bound it
for a number of sensor network models. The sensing capacity expression differs
significantly from the channel capacity due to the fact that a fixed sensor
configuration encodes all states of the environment. As a result, codewords are
dependent and non-identically distributed. The sensing capacity provides a
bound on the minimal number of sensors required to detect the state of an
environment to within a desired accuracy. The results differ significantly from
classical detection theory, and provide an ntriguing connection between sensor
networks and communications. In addition, we discuss the insight that sensing
capacity provides for the problem of sensor selection.Comment: Submitted to IEEE Transactions on Information Theory, November 200
Sensing Capacity for Markov Random Fields
This paper computes the sensing capacity of a sensor network, with sensors of
limited range, sensing a two-dimensional Markov random field, by modeling the
sensing operation as an encoder. Sensor observations are dependent across
sensors, and the sensor network output across different states of the
environment is neither identically nor independently distributed. Using a
random coding argument, based on the theory of types, we prove a lower bound on
the sensing capacity of the network, which characterizes the ability of the
sensor network to distinguish among environments with Markov structure, to
within a desired accuracy.Comment: To appear in the proceedings of the 2005 IEEE International Symposium
on Information Theory, Adelaide, Australia, September 4-9, 200
Latent Sentiment Detection in Online Social Networks: A Communications-oriented View
In this paper, we consider the problem of latent sentiment detection in
Online Social Networks such as Twitter. We demonstrate the benefits of using
the underlying social network as an Ising prior to perform network aided
sentiment detection. We show that the use of the underlying network results in
substantially lower detection error rates compared to strictly features-based
detection. In doing so, we introduce a novel communications-oriented framework
for characterizing the probability of error, based on information-theoretic
analysis. We study the variation of the calculated error exponent for several
stylized network topologies such as the complete network, the star network and
the closed-chain network, and show the importance of the network structure in
determining detection performance.Comment: 13 pages, 6 figures, Submitted to ICC 201
Distributed Throughput-optimal Scheduling in Ad Hoc Wireless Networks
In this paper, we propose a distributed throughput-optimal ad hoc wireless
network scheduling algorithm, which is motivated by the celebrated simplex
algorithm for solving linear programming (LP) problems. The scheduler stores a
sparse set of basic schedules, and chooses the max-weight basic schedule for
transmission in each time slot. At the same time, the scheduler tries to update
the set of basic schedules by searching for a new basic schedule in a
throughput increasing direction. We show that both of the above procedures can
be achieved in a distributed manner. Specifically, we propose an average
consensus based link contending algorithm to implement the distributed max
weight scheduling. Further, we show that the basic schedule update can be
implemented using CSMA mechanisms, which is similar to the one proposed by
Jiang et al. Compared to the optimal distributed scheduler in Jiang's paper,
where schedules change in a random walk fashion, our algorithm has a better
delay performance by achieving faster schedule transitions in the steady state.
The performance of the algorithm is finally confirmed by simulation results.Comment: 6 pages, 3 figures. A shorter version will appear in the proceedings
of IEEE ICC 201
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