7,667 research outputs found
Gaussian process single-index models as emulators for computer experiments
A single-index model (SIM) provides for parsimonious multi-dimensional
nonlinear regression by combining parametric (linear) projection with
univariate nonparametric (non-linear) regression models. We show that a
particular Gaussian process (GP) formulation is simple to work with and ideal
as an emulator for some types of computer experiment as it can outperform the
canonical separable GP regression model commonly used in this setting. Our
contribution focuses on drastically simplifying, re-interpreting, and then
generalizing a recently proposed fully Bayesian GP-SIM combination, and then
illustrating its favorable performance on synthetic data and a real-data
computer experiment. Two R packages, both released on CRAN, have been augmented
to facilitate inference under our proposed model(s).Comment: 23 pages, 9 figures, 1 tabl
Chosen-Plaintext Cryptanalysis of a Clipped-Neural-Network-Based Chaotic Cipher
In ISNN'04, a novel symmetric cipher was proposed, by combining a chaotic
signal and a clipped neural network (CNN) for encryption. The present paper
analyzes the security of this chaotic cipher against chosen-plaintext attacks,
and points out that this cipher can be broken by a chosen-plaintext attack.
Experimental analyses are given to support the feasibility of the proposed
attack.Comment: LNCS style, 7 pages, 1 figure (6 sub-figures
Small Instantons in and Sigma Models
The anomalous scaling behavior of the topological susceptibility in
two-dimensional sigma models for is studied using the
overlap Dirac operator construction of the lattice topological charge density.
The divergence of in these models is traced to the presence of small
instantons with a radius of order (= lattice spacing), which are directly
observed on the lattice. The observation of these small instantons provides
detailed confirmation of L\"{u}scher's argument that such short-distance
excitations, with quantized topological charge, should be the dominant
topological fluctuations in and , leading to a divergent
topological susceptibility in the continuum limit. For the \CP models with
the topological susceptibility is observed to scale properly with the
mass gap. These larger models are not dominated by instantons, but rather
by coherent, one-dimensional regions of topological charge which can be
interpreted as domain wall or Wilson line excitations and are analogous to
D-brane or ``Wilson bag'' excitations in QCD. In Lorentz gauge, the small
instantons and Wilson line excitations can be described, respectively, in terms
of poles and cuts of an analytic gauge potential.Comment: 33 pages, 12 figure
Twisted Bilayer Graphene: A Phonon Driven Superconductor
We study the electron-phonon coupling in twisted bilayer graphene (TBG),
which was recently experimentally observed to exhibit superconductivity around
the magic twist angle . We show that phonon-mediated
electron electron attraction at the magic angle is strong enough to induce a
conventional intervalley pairing between graphene valleys and with a
superconducting critical temperature , in agreement with the
experiment. We predict that superconductivity can also be observed in TBG at
many other angles and higher electron densities in higher Moir\'e
bands, which may also explain the possible granular superconductivity of highly
oriented pyrolytic graphite. We support our conclusions by \emph{ab initio}
calculations.Comment: 6+20 pages, 4+6 figure
Bayesian Quantile Regression for Single-Index Models
Using an asymmetric Laplace distribution, which provides a mechanism for
Bayesian inference of quantile regression models, we develop a fully Bayesian
approach to fitting single-index models in conditional quantile regression. In
this work, we use a Gaussian process prior for the unknown nonparametric link
function and a Laplace distribution on the index vector, with the latter
motivated by the recent popularity of the Bayesian lasso idea. We design a
Markov chain Monte Carlo algorithm for posterior inference. Careful
consideration of the singularity of the kernel matrix, and tractability of some
of the full conditional distributions leads to a partially collapsed approach
where the nonparametric link function is integrated out in some of the sampling
steps. Our simulations demonstrate the superior performance of the Bayesian
method versus the frequentist approach. The method is further illustrated by an
application to the hurricane data.Comment: 26 pages, 8 figures, 10 table
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