442 research outputs found
Collaborative tagging as a tripartite network
We describe online collaborative communities by tripartite networks, the
nodes being persons, items and tags. We introduce projection methods in order
to uncover the structures of the networks, i.e. communities of users, genre
families...
To do so, we focus on the correlations between the nodes, depending on their
profiles, and use percolation techniques that consist in removing less
correlated links and observing the shaping of disconnected islands. The
structuring of the network is visualised by using a tree representation. The
notion of diversity in the system is also discussed
A Brownian particle having a fluctuating mass
We focus on the dynamics of a Brownian particle whose mass fluctuates. First
we show that the behaviour is similar to that of a Brownian particle moving in
a fluctuating medium, as studied by Beck [Phys. Rev. Lett. 87 (2001) 180601].
By performing numerical simulations of the Langevin equation, we check the
theoretical predictions derived in the adiabatic limit, and study deviations
outside this limit. We compare the mass velocity distribution with truncated
Tsallis distributions [J. Stat. Phys. 52 (1988) 479] and find excellent
agreement if the masses are chi- squared distributed. We also consider the
diffusion of the Brownian particle by studying a Bernoulli random walk with
fluctuating walk length in one dimension. We observe the time dependence of the
position distribution kurtosis and find interesting behaviours. We point out a
few physical cases where the mass fluctuation problem could be encountered as a
first approximation for agglomeration- fracture non equilibrium processes.Comment: submitted to PR
On the genre-fication of Music: a percolation approach (long version)
In this paper, we analyze web-downloaded data on people sharing their music
library. By attributing to each music group usual music genres (Rock, Pop...),
and analysing correlations between music groups of different genres with
percolation-idea based methods, we probe the reality of these subdivisions and
construct a music genre cartography, with a tree representation. We also show
the diversity of music genres with Shannon entropy arguments, and discuss an
alternative objective way to classify music, that is based on the complex
structure of the groups audience. Finally, a link is drawn with the theory of
hidden variables in complex networks.Comment: 7 pages, 5 figures, submitted to the proceedings of the 3rd
International Conference NEXT-SigmaPh
Uncovering collective listening habits and music genres in bipartite networks
In this paper, we analyze web-downloaded data on people sharing their music
library, that we use as their individual musical signatures (IMS). The system
is represented by a bipartite network, nodes being the music groups and the
listeners. Music groups audience size behaves like a power law, but the
individual music library size is an exponential with deviations at small
values. In order to extract structures from the network, we focus on
correlation matrices, that we filter by removing the least correlated links.
This percolation idea-based method reveals the emergence of social communities
and music genres, that are visualised by a branching representation. Evidence
of collective listening habits that do not fit the neat usual genres defined by
the music industry indicates an alternative way of classifying listeners/music
groups. The structure of the network is also studied by a more refined method,
based upon a random walk exploration of its properties. Finally, a personal
identification - community imitation model (PICI) for growing bipartite
networks is outlined, following Potts ingredients. Simulation results do
reproduce quite well the empirical data.Comment: submitted to PR
Growing network with j-redirection
A model for growing information networks is introduced where nodes receive
new links through j-redirection, i.e. the probability for a node to receive a
link depends on the number of paths of length j arriving at this node. In
detail, when a new node enters the network, it either connects to a randomly
selected node, or to the j -ancestor of this selected node. The j -ancestor is
found by following j links from the randomly selected node. The system is shown
to undergo a transition to a phase where condensates develop. We also find
analytical predictions for the height statistics and show numerically the
non-trivial behaviour of the degree distribution.Comment: 7 page
Word statistics in Blogs and RSS feeds: Towards empirical universal evidence
We focus on the statistics of word occurrences and of the waiting times
between such occurrences in Blogs. Due to the heterogeneity of words'
frequencies, the empirical analysis is performed by studying classes of
"frequently-equivalent" words, i.e. by grouping words depending on their
frequencies. Two limiting cases are considered: the dilute limit, i.e. for
those words that are used less than once a day, and the dense limit for
frequent words. In both cases, extreme events occur more frequently than
expected from the Poisson hypothesis. These deviations from Poisson statistics
reveal non-trivial time correlations between events that are associated with
bursts of activities. The distribution of waiting times is shown to behave like
a stretched exponential and to have the same shape for different sets of words
sharing a common frequency, thereby revealing universal features.Comment: 16 pages, 6 figure
Majority Model on a network with communities
We focus on the majority model in a topology consisting of two coupled
fully-connected networks, thereby mimicking the existence of communities in
social networks. We show that a transition takes place at a value of the
inter-connectivity parameter. Above this value, only symmetric solutions
prevail, where both communities agree with each other and reach consensus.
Below this value, in contrast, the communities can reach opposite opinions and
an asymmetric state is attained. The importance of the interface between the
sub-networks is shown.Comment: 4 page
From particle segregation to the granular clock
Recently several authors studied the segregation of particles for a system
composed of mono-dispersed inelastic spheres contained in a box divided by a
wall in the middle. The system exhibited a symmetry breaking leading to an
overpopulation of particles in one side of the box. Here we study the
segregation of a mixture of particles composed of inelastic hard spheres and
fluidized by a vibrating wall. Our numerical simulations show a rich
phenomenology: horizontal segregation and periodic behavior. We also propose an
empirical system of ODEs representing the proportion of each type of particles
and the segregation flux of particles. These equations reproduce the major
features observed by the simulations.Comment: 10 page
Clusters or networks of economies? A macroeconomy study through GDP fluctuation correlations
We follow up on the study of correlations between GDP's of rich countries. We
analyze web-downloaded data on GDP that we use as individual wealth signatures
of the country economical state. We calculate the yearly fluctuations of the
GDP. We look for forward and backward correlations between such fluctuations.
The system is represented by an evolving network, nodes being the GDP
fluctuations (or countries) at different times.
In order to extract structures from the network, we focus on filtering the
time delayed correlations by removing the least correlated links. This
percolation idea-based method reveals the emergence of connections, that are
visualized by a branching representation. Note that the network is made of
weighted and directed links when taking into account a delay time. Such a
measure of collective habits does not fit the usual expectations defined by
politicians or economists.Comment: 9 pages, 3 figure
Laplacian Dynamics and Multiscale Modular Structure in Networks
Most methods proposed to uncover communities in complex networks rely on
their structural properties. Here we introduce the stability of a network
partition, a measure of its quality defined in terms of the statistical
properties of a dynamical process taking place on the graph. The time-scale of
the process acts as an intrinsic parameter that uncovers community structures
at different resolutions. The stability extends and unifies standard notions
for community detection: modularity and spectral partitioning can be seen as
limiting cases of our dynamic measure. Similarly, recently proposed
multi-resolution methods correspond to linearisations of the stability at short
times. The connection between community detection and Laplacian dynamics
enables us to establish dynamically motivated stability measures linked to
distinct null models. We apply our method to find multi-scale partitions for
different networks and show that the stability can be computed efficiently for
large networks with extended versions of current algorithms.Comment: New discussions on the selection of the most significant scales and
the generalisation of stability to directed network
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