463 research outputs found
The asymptotical error of broadcast gossip averaging algorithms
In problems of estimation and control which involve a network, efficient
distributed computation of averages is a key issue. This paper presents
theoretical and simulation results about the accumulation of errors during the
computation of averages by means of iterative "broadcast gossip" algorithms.
Using martingale theory, we prove that the expectation of the accumulated error
can be bounded from above by a quantity which only depends on the mixing
parameter of the algorithm and on few properties of the network: its size, its
maximum degree and its spectral gap. Both analytical results and computer
simulations show that in several network topologies of applicative interest the
accumulated error goes to zero as the size of the network grows large.Comment: 10 pages, 3 figures. Based on a draft submitted to IFACWC201
On the mean square error of randomized averaging algorithms
This paper regards randomized discrete-time consensus systems that preserve
the average "on average". As a main result, we provide an upper bound on the
mean square deviation of the consensus value from the initial average. Then, we
apply our result to systems where few or weakly correlated interactions take
place: these assumptions cover several algorithms proposed in the literature.
For such systems we show that, when the network size grows, the deviation tends
to zero, and the speed of this decay is not slower than the inverse of the
size. Our results are based on a new approach, which is unrelated to the
convergence properties of the system.Comment: 11 pages. to appear as a journal publicatio
Effects of Network Communities and Topology Changes in Message-Passing Computation of Harmonic Influence in Social Networks
The harmonic influence is a measure of the importance of nodes in social
networks, which can be approximately computed by a distributed message-passing
algorithm. In this extended abstract we look at two open questions about this
algorithm. How does it perform on real social networks, which have complex
topologies structured in communities? How does it perform when the network
topology changes while the algorithm is running? We answer these two questions
by numerical experiments on a Facebook ego network and on synthetic networks,
respectively. We find out that communities can introduce artefacts in the final
approximation and cause the algorithm to overestimate the importance of "local
leaders" within communities. We also observe that the algorithm is able to
adapt smoothly to changes in the topology.Comment: 4 pages, 7 figures, submitted as conference extended abstrac
Asynchronous opinion dynamics on the -nearest-neighbors graph
This paper is about a new model of opinion dynamics with opinion-dependent
connectivity. We assume that agents update their opinions asynchronously and
that each agent's new opinion depends on the opinions of the agents that
are closest to it. We show that the resulting dynamics is substantially
different from comparable models in the literature, such as bounded-confidence
models. We study the equilibria of the dynamics, observing that they are robust
to perturbations caused by the introduction of new agents. We also prove that
if the number of agents is smaller than , the dynamics converge to
consensus. This condition is only sufficient.Comment: 17 pages, 4 figures, (to be) presented at the 57th IEEE Conference on
Decision and Control, 201
Average resistance of toroidal graphs
The average effective resistance of a graph is a relevant performance index
in many applications, including distributed estimation and control of network
systems. In this paper, we study how the average resistance depends on the
graph topology and specifically on the dimension of the graph. We concentrate
on -dimensional toroidal grids and we exploit the connection between
resistance and Laplacian eigenvalues. Our analysis provides tight estimates of
the average resistance, which are key to study its asymptotic behavior when the
number of nodes grows to infinity. In dimension two, the average resistance
diverges: in this case, we are able to capture its rate of growth when the
sides of the grid grow at different rates. In higher dimensions, the average
resistance is bounded uniformly in the number of nodes: in this case, we
conjecture that its value is of order for large . We prove this fact
for hypercubes and when the side lengths go to infinity.Comment: 24 pages, 6 figures, to appear in SIAM Journal on Control and
Optimization (SICON
Discontinuities and hysteresis in quantized average consensus
We consider continuous-time average consensus dynamics in which the agents'
states are communicated through uniform quantizers. Solutions to the resulting
system are defined in the Krasowskii sense and are proven to converge to
conditions of "practical consensus". To cope with undesired chattering
phenomena we introduce a hysteretic quantizer, and we study the convergence
properties of the resulting dynamics by a hybrid system approach.Comment: 26 pages, 7 figures. Accepted for publication in Automatica. v4 is
minor revision of v
Limited benefit of cooperation in distributed relative localization
Important applications in robotic and sensor networks require distributed
algorithms to solve the so-called relative localization problem: a node-indexed
vector has to be reconstructed from measurements of differences between
neighbor nodes. In a recent note, we have studied the estimation error of a
popular gradient descent algorithm showing that the mean square error has a
minimum at a finite time, after which the performance worsens. This paper
proposes a suitable modification of this algorithm incorporating more realistic
"a priori" information on the position. The new algorithm presents a
performance monotonically decreasing to the optimal one. Furthermore, we show
that the optimal performance is approximated, up to a 1 + \eps factor, within a
time which is independent of the graph and of the number of nodes. This
convergence time is very much related to the minimum exhibited by the previous
algorithm and both lead to the following conclusion: in the presence of noisy
data, cooperation is only useful till a certain limit.Comment: 11 pages, 2 figures, submitted to conferenc
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