16,832 research outputs found
Operators for quantized directions
Inspired by the spin geometry theorem, two operators are defined which
measure angles in the quantum theory of geometry. One operator assigns a
discrete angle to every pair of surfaces passing through a single vertex of a
spin network. This operator, which is effectively the cosine of an angle, is
defined via a scalar product density operator and the area operator. The second
operator assigns an angle to two ``bundles'' of edges incident to a single
vertex. While somewhat more complicated than the earlier geometric operators,
there are a number of properties that are investigated including the full
spectrum of several operators and, using results of the spin geometry theorem,
conditions to ensure that semiclassical geometry states replicate classical
angles.Comment: v1: 20 pages, 23 figures v2: changes in presentation and
regularization (final results unchanged). This is an expanded version of the
one to be published in Class. Quant. Gra
Zero Forcing Sets and Bipartite Circulants
In this paper we introduce a class of regular bipartite graphs whose
biadjacency matrices are circulant matrices and we describe some of their
properties. Notably, we compute upper and lower bounds for the zero forcing
number for such a graph based only on the parameters that describe its
biadjacency matrix. The main results of the paper characterize the bipartite
circulant graphs that achieve equality in the lower bound.Comment: 22 pages, 13 figure
New Operators for Spin Net Gravity: Definitions and Consequences
Two operators for quantum gravity, angle and quasilocal energy, are briefly
reviewed. The requirements to model semi-classical angles are discussed. To
model semi-classical angles it is shown that the internal spins of the vertex
must be very large, ~10^20.Comment: 7 pages, 2 figures, a talk at the MG9 Meeting, Rome, July 2-8, 200
Identifiability of Large Phylogenetic Mixture Models
Phylogenetic mixture models are statistical models of character evolution
allowing for heterogeneity. Each of the classes in some unknown partition of
the characters may evolve by different processes, or even along different
trees. The fundamental question of whether parameters of such a model are
identifiable is difficult to address, due to the complexity of the
parameterization. We analyze mixture models on large trees, with many mixture
components, showing that both numerical and tree parameters are indeed
identifiable in these models when all trees are the same. We also explore the
extent to which our algebraic techniques can be employed to extend the result
to mixtures on different trees.Comment: 15 page
The Bursty Dynamics of the Twitter Information Network
In online social media systems users are not only posting, consuming, and
resharing content, but also creating new and destroying existing connections in
the underlying social network. While each of these two types of dynamics has
individually been studied in the past, much less is known about the connection
between the two. How does user information posting and seeking behavior
interact with the evolution of the underlying social network structure?
Here, we study ways in which network structure reacts to users posting and
sharing content. We examine the complete dynamics of the Twitter information
network, where users post and reshare information while they also create and
destroy connections. We find that the dynamics of network structure can be
characterized by steady rates of change, interrupted by sudden bursts.
Information diffusion in the form of cascades of post re-sharing often creates
such sudden bursts of new connections, which significantly change users' local
network structure. These bursts transform users' networks of followers to
become structurally more cohesive as well as more homogenous in terms of
follower interests. We also explore the effect of the information content on
the dynamics of the network and find evidence that the appearance of new topics
and real-world events can lead to significant changes in edge creations and
deletions. Lastly, we develop a model that quantifies the dynamics of the
network and the occurrence of these bursts as a function of the information
spreading through the network. The model can successfully predict which
information diffusion events will lead to bursts in network dynamics
A Spin Network Primer
Spin networks, essentially labeled graphs, are ``good quantum numbers'' for
the quantum theory of geometry. These structures encompass a diverse range of
techniques which may be used in the quantum mechanics of finite dimensional
systems, gauge theory, and knot theory. Though accessible to undergraduates,
spin network techniques are buried in more complicated formulations. In this
paper a diagrammatic method, simple but rich, is introduced through an
association of 2 by 2 matrices to diagrams. This spin network diagrammatic
method offers new perspectives on the quantum mechanics of angular momentum,
group theory, knot theory, and even quantum geometry. Examples in each of these
areas are discussed.Comment: A review of spin networks suitable for students of advanced quantum
mechanics (undergraduate). 16 pages, many eps figures, to be published in Am.
J. Phys v2: Updated to include key referenc
On the Convexity of Latent Social Network Inference
In many real-world scenarios, it is nearly impossible to collect explicit
social network data. In such cases, whole networks must be inferred from
underlying observations. Here, we formulate the problem of inferring latent
social networks based on network diffusion or disease propagation data. We
consider contagions propagating over the edges of an unobserved social network,
where we only observe the times when nodes became infected, but not who
infected them. Given such node infection times, we then identify the optimal
network that best explains the observed data. We present a maximum likelihood
approach based on convex programming with a l1-like penalty term that
encourages sparsity. Experiments on real and synthetic data reveal that our
method near-perfectly recovers the underlying network structure as well as the
parameters of the contagion propagation model. Moreover, our approach scales
well as it can infer optimal networks of thousands of nodes in a matter of
minutes.Comment: NIPS, 201
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