1,651 research outputs found
Optimisation of on-line principal component analysis
Different techniques, used to optimise on-line principal component analysis,
are investigated by methods of statistical mechanics. These include local and
global optimisation of node-dependent learning-rates which are shown to be very
efficient in speeding up the learning process. They are investigated further
for gaining insight into the learning rates' time-dependence, which is then
employed for devising simple practical methods to improve training performance.
Simulations demonstrate the benefit gained from using the new methods.Comment: 10 pages, 5 figure
Modelling sublimation and atomic layer epitaxy in the presence of competing surface reconstructions
We present a solid-on-solid model of a binary AB compound, where atoms of
type A in the topmost layer interact via anisotropic interactions different
from those inside the bulk. Depending on temperature and particle flux, this
model displays surface reconstructions similar to those of (001) surfaces of
II-VI semiconductors. We show, that our model qualitatively reproduces mamy of
the characteristic features of these materials which have been observed during
sublimation and atomic layer epitaxy. We predict some previously unknown
effects which might be observed experimentally.Comment: 4 pages, 2 figures. New title, additional figures, minor changes in
the text. See http://theorie.physik.uni-wuerzburg.de/~ahr/AB/ for surface
images and MPEG movie
Functional Optimisation of Online Algorithms in Multilayer Neural Networks
We study the online dynamics of learning in fully connected soft committee
machines in the student-teacher scenario. The locally optimal modulation
function, which determines the learning algorithm, is obtained from a
variational argument in such a manner as to maximise the average generalisation
error decay per example. Simulations results for the resulting algorithm are
presented for a few cases. The symmetric phase plateaux are found to be vastly
reduced in comparison to those found when online backpropagation algorithms are
used. A discussion of the implementation of these ideas as practical algorithms
is given
Modelling (001) surfaces of II-VI semiconductors
First, we present a two-dimensional lattice gas model with anisotropic
interactions which explains the experimentally observed transition from a
dominant c(2x2) ordering of the CdTe(001) surface to a local (2x1) arrangement
of the Cd atoms as an equilibrium phase transition. Its analysis by means of
transfer-matrix and Monte Carlo techniques shows that the small energy
difference of the competing reconstructions determines to a large extent the
nature of the different phases. Then, this lattice gas is extended to a model
of a three-dimensional crystal which qualitatively reproduces many of the
characteristic features of CdTe which have been observed during sublimation and
atomic layer epitaxy.Comment: 5 pages, 3 figure
The Taxpayer Relief Act of 1997 and Homeownership: Is Smaller Now Better?
Prior to 1997, homeowners under 55 were allowed to defer capital gains taxes from a home sale if they bought another house at least as expensive, while those over 55 received a capital gains exclusion regardless of the cost of their new home. The Taxpayer Relief Act of 1997 (TRA97) eliminated this differential tax treatment. We exploit the differential treatment before 1997 to uncover TRA97’s effects. Comparing homeowners under 55 before and after 1997, we find that those who moved after 1997 are twice as likely as to list “seeking less expensive housing” as a reason for moving, 8 percent less likely to own their residences and 9 percent less likely to live in a single family home.
Phase Transitions of Neural Networks
The cooperative behaviour of interacting neurons and synapses is studied
using models and methods from statistical physics. The competition between
training error and entropy may lead to discontinuous properties of the neural
network. This is demonstrated for a few examples: Perceptron, associative
memory, learning from examples, generalization, multilayer networks, structure
recognition, Bayesian estimate, on-line training, noise estimation and time
series generation.Comment: Plenary talk for MINERVA workshop on mesoscopics, fractals and neural
networks, Eilat, March 1997 Postscript Fil
Evaporation and Step Edge Diffusion in MBE
Using kinetic Monte-Carlo simulations of a Solid-on-Solid model we
investigate the influence of step edge diffusion (SED) and evaporation on
Molecular Beam Epitaxy (MBE). Based on these investigations we propose two
strategies to optimize MBE-growth. The strategies are applicable in different
growth regimes: during layer-by-layer growth one can reduce the desorption rate
using a pulsed flux. In three-dimensional (3D) growth the SED can help to grow
large, smooth structures. For this purpose the flux has to be reduced with time
according to a power law.Comment: 5 pages, 2 figures, latex2e (packages: elsevier,psfig,latexsym
Phase transitions in soft-committee machines
Equilibrium statistical physics is applied to layered neural networks with
differentiable activation functions. A first analysis of off-line learning in
soft-committee machines with a finite number (K) of hidden units learning a
perfectly matching rule is performed. Our results are exact in the limit of
high training temperatures. For K=2 we find a second order phase transition
from unspecialized to specialized student configurations at a critical size P
of the training set, whereas for K > 2 the transition is first order. Monte
Carlo simulations indicate that our results are also valid for moderately low
temperatures qualitatively. The limit K to infinity can be performed
analytically, the transition occurs after presenting on the order of N K
examples. However, an unspecialized metastable state persists up to P= O (N
K^2).Comment: 8 pages, 4 figure
Binary Neutron Star Merger Remnants as Sources of Cosmic Rays Below the "Ankle"
We investigate non-thermal electron and nuclei energy losses within the
binary neutron star merger remnant produced by the event GW170817. The lack of
a cooling feature within the detected synchrotron emission from the source is
used to constrain the magnetic field at the mG level, assuming that this
emission is electron synchrotron in origin, and that the accelerated spectrum
in the electrons follows the form . The level of
subsequent gamma-ray emission from the source is demonstrated to provide a
further constraint on the source magnetic field strength. We also put forward
alternative strong (G) magnetic field scenarios able to support this
emission. For such stronger fields, the photo-disintegration of non-thermal
nuclei within the source is considered, and a bottleneck period of 5-30
days is found when this process peaks. We find that this class of source is in
principle able to support the population of cosmic rays detected at Earth below
the "ankle".Comment: Accepted for publication in Astropart. Phy
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