2,438 research outputs found
Proper local scoring rules on discrete sample spaces
A scoring rule is a loss function measuring the quality of a quoted
probability distribution for a random variable , in the light of the
realized outcome of ; it is proper if the expected score, under any
distribution for , is minimized by quoting . Using the fact that
any differentiable proper scoring rule on a finite sample space
is the gradient of a concave homogeneous function, we consider when such a rule
can be local in the sense of depending only on the probabilities quoted for
points in a nominated neighborhood of . Under mild conditions, we
characterize such a proper local scoring rule in terms of a collection of
homogeneous functions on the cliques of an undirected graph on the space
. A useful property of such rules is that the quoted
distribution need only be known up to a scale factor. Examples of the use
of such scoring rules include Besag's pseudo-likelihood and Hyv\"{a}rinen's
method of ratio matching.Comment: Published in at http://dx.doi.org/10.1214/12-AOS972 the Annals of
Statistics (http://www.imstat.org/aos/) by the Institute of Mathematical
Statistics (http://www.imstat.org
Electric control of collective atomic coherence in an Erbium doped solid
We demonstrate fast and accurate control of the evolution of collective
atomic coherences in an Erbium doped solid using external electric fields. This
is achieved by controlling the inhomogeneous broadening of Erbium ions emitting
at 1536 nm using an electric field gradient and the linear Stark effect. The
manipulation of atomic coherence is characterized with the collective
spontaneous emission (optical free induction decay) emitted by the sample after
an optical excitation, which does not require any previous preparation of the
atoms. We show that controlled dephasing and rephasing of the atoms by the
electric field result in collapses and revivals of the optical free induction
decay. Our results show that the use of external electric fields does not
introduce any substantial additional decoherence and enables the manipulation
of collective atomic coherence with a very high degree of precision on the time
scale of tens of ns. This provides an interesting resource for photonic quantum
state storage and quantum state manipulation.Comment: 10 pages, 5 figure
Maximum Likelihood Estimation in Gaussian Chain Graph Models under the Alternative Markov Property
The AMP Markov property is a recently proposed alternative Markov property
for chain graphs. In the case of continuous variables with a joint multivariate
Gaussian distribution, it is the AMP rather than the earlier introduced LWF
Markov property that is coherent with data-generation by natural
block-recursive regressions. In this paper, we show that maximum likelihood
estimates in Gaussian AMP chain graph models can be obtained by combining
generalized least squares and iterative proportional fitting to an iterative
algorithm. In an appendix, we give useful convergence results for iterative
partial maximization algorithms that apply in particular to the described
algorithm.Comment: 15 pages, article will appear in Scandinavian Journal of Statistic
Practical Bayesian Modeling and Inference for Massive Spatial Datasets On Modest Computing Environments
With continued advances in Geographic Information Systems and related
computational technologies, statisticians are often required to analyze very
large spatial datasets. This has generated substantial interest over the last
decade, already too vast to be summarized here, in scalable methodologies for
analyzing large spatial datasets. Scalable spatial process models have been
found especially attractive due to their richness and flexibility and,
particularly so in the Bayesian paradigm, due to their presence in hierarchical
model settings. However, the vast majority of research articles present in this
domain have been geared toward innovative theory or more complex model
development. Very limited attention has been accorded to approaches for easily
implementable scalable hierarchical models for the practicing scientist or
spatial analyst. This article is submitted to the Practice section of the
journal with the aim of developing massively scalable Bayesian approaches that
can rapidly deliver Bayesian inference on spatial process that are practically
indistinguishable from inference obtained using more expensive alternatives. A
key emphasis is on implementation within very standard (modest) computing
environments (e.g., a standard desktop or laptop) using easily available
statistical software packages without requiring message-parsing interfaces or
parallel programming paradigms. Key insights are offered regarding assumptions
and approximations concerning practical efficiency.Comment: 20 pages, 4 figures, 2 table
On the angular momentum dependence of nuclear level densities
Angular momentum dependence of nuclear level densities at finite temperatures
are investigated in the static path approximation(SPA) to the partition
function using a cranked quadrupole interaction Hamiltonian in the following
three schemes: (i) cranking about x-axis, (ii) cranking about z-axis and (iii)
cranking about z-axis but correcting for the orientation fluctuation of the
axis. Performing numerical computations for an and a shell nucleus,
we find that the x-axis cranking results are satisfactory for reasonably heavy
nuclei and this offers a computationally faster method to include the angular
momentum dependence at high temperatures in the SPA approach. It also appears
that at high spins inclusion of orientation fluctuation correction would be
important.Comment: 19 Latex pages, 9 figures(available upon request
Transfer Entropy as a Log-likelihood Ratio
Transfer entropy, an information-theoretic measure of time-directed
information transfer between joint processes, has steadily gained popularity in
the analysis of complex stochastic dynamics in diverse fields, including the
neurosciences, ecology, climatology and econometrics. We show that for a broad
class of predictive models, the log-likelihood ratio test statistic for the
null hypothesis of zero transfer entropy is a consistent estimator for the
transfer entropy itself. For finite Markov chains, furthermore, no explicit
model is required. In the general case, an asymptotic chi-squared distribution
is established for the transfer entropy estimator. The result generalises the
equivalence in the Gaussian case of transfer entropy and Granger causality, a
statistical notion of causal influence based on prediction via vector
autoregression, and establishes a fundamental connection between directed
information transfer and causality in the Wiener-Granger sense
The physical determinants of the thickness of lamellar polymer crystals
Based upon kinetic Monte Carlo simulations of crystallization in a simple
polymer model we present a new picture of the mechanism by which the thickness
of lamellar polymer crystals is constrained to a value close to the minimum
thermodynamically stable thickness. This description contrasts with those given
by the two dominant theoretical approaches.Comment: 4 pages, 4 figures, revte
Hierarchical Models for Independence Structures of Networks
We introduce a new family of network models, called hierarchical network
models, that allow us to represent in an explicit manner the stochastic
dependence among the dyads (random ties) of the network. In particular, each
member of this family can be associated with a graphical model defining
conditional independence clauses among the dyads of the network, called the
dependency graph. Every network model with dyadic independence assumption can
be generalized to construct members of this new family. Using this new
framework, we generalize the Erd\"os-R\'enyi and beta-models to create
hierarchical Erd\"os-R\'enyi and beta-models. We describe various methods for
parameter estimation as well as simulation studies for models with sparse
dependency graphs.Comment: 19 pages, 7 figure
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