81,730 research outputs found
Higher Accuracy for Bayesian and Frequentist Inference: Large Sample Theory for Small Sample Likelihood
Recent likelihood theory produces -values that have remarkable accuracy
and wide applicability. The calculations use familiar tools such as maximum
likelihood values (MLEs), observed information and parameter rescaling. The
usual evaluation of such -values is by simulations, and such simulations do
verify that the global distribution of the -values is uniform(0, 1), to high
accuracy in repeated sampling. The derivation of the -values, however,
asserts a stronger statement, that they have a uniform(0, 1) distribution
conditionally, given identified precision information provided by the data. We
take a simple regression example that involves exact precision information and
use large sample techniques to extract highly accurate information as to the
statistical position of the data point with respect to the parameter:
specifically, we examine various -values and Bayesian posterior survivor
-values for validity. With observed data we numerically evaluate the various
-values and -values, and we also record the related general formulas. We
then assess the numerical values for accuracy using Markov chain Monte Carlo
(McMC) methods. We also propose some third-order likelihood-based procedures
for obtaining means and variances of Bayesian posterior distributions, again
followed by McMC assessment. Finally we propose some adaptive McMC methods to
improve the simulation acceptance rates. All these methods are based on
asymptotic analysis that derives from the effect of additional data. And the
methods use simple calculations based on familiar maximizing values and related
informations. The example illustrates the general formulas and the ease of
calculations, while the McMC assessments demonstrate the numerical validity of
the -values as percentage position of a data point. The example, however, is
very simple and transparent, and thus gives little indication that in a wide
generality of models the formulas do accurately separate information for almost
any parameter of interest, and then do give accurate -value determinations
from that information. As illustration an enigmatic problem in the literature
is discussed and simulations are recorded; various examples in the literature
are cited.Comment: Published in at http://dx.doi.org/10.1214/07-STS240 the Statistical
Science (http://www.imstat.org/sts/) by the Institute of Mathematical
Statistics (http://www.imstat.org
Random Feature Maps via a Layered Random Projection (LaRP) Framework for Object Classification
The approximation of nonlinear kernels via linear feature maps has recently
gained interest due to their applications in reducing the training and testing
time of kernel-based learning algorithms. Current random projection methods
avoid the curse of dimensionality by embedding the nonlinear feature space into
a low dimensional Euclidean space to create nonlinear kernels. We introduce a
Layered Random Projection (LaRP) framework, where we model the linear kernels
and nonlinearity separately for increased training efficiency. The proposed
LaRP framework was assessed using the MNIST hand-written digits database and
the COIL-100 object database, and showed notable improvement in object
classification performance relative to other state-of-the-art random projection
methods.Comment: 5 page
The yield and post-yield behavior of high-density polyethylene
An experimental and analytical evaluation was made of the yield and post-yield behavior of high-density polyethylene, a semi-crystalline thermoplastic. Polyethylene was selected for study because it is very inexpensive and readily available in the form of thin-walled tubes. Thin-walled tubular specimens were subjected to axial loads and internal pressures, such that the specimens were subjected to a known biaxial loading. A constant octahederal shear stress rate was imposed during all tests. The measured yield and post-yield behavior was compared with predictions based on both isotropic and anisotropic models. Of particular interest was whether inelastic behavior was sensitive to the hydrostatic stress level. The major achievements and conclusions reached are discussed
Surface roughness influence on the quality factor of high frequency nanoresonators
Surface roughness influences significantly the quality factor of high
frequency nanoresonators for large frequency - relaxation times within the
non-Newtonian regime, where a purely elastic dynamics develops. It is shown
that the influence of sort wavelength roughness, which is expressed by the
roughness exponent H for the case of self-affine roughness, plays significant
role in comparison with the effect of the long wavelength roughness parameters
such as the rms roughness amplitude and the lateral roughness correlation
length. Therefore, the surface morphology can play important role in designing
high-frequency resonators operating within the non-Newtonian regime.Comment: 13 pages, 4 figures, To appear in J. Appl. Phys. (2008
The Diamine Cation Is Not a Chemical Example Where Density Functional Theory Fails
In a recent communication, Weber and co-workers presented a surprising study
on charge-localization effects in the N,N'-dimethylpiperazine (DMP+) diamine
cation to provide a stringent test of density functional theory (DFT) methods.
Within their study, the authors examined various DFT methods and concluded that
"all DFT functionals commonly used today, including hybrid functionals with
exact exchange, fail to predict a stable charge-localized state." This
surprising conclusion is based on the authors' use of a self-interaction
correction (namely, complex-valued Perdew-Zunger Self-Interaction Correction
(PZ-SIC)) to DFT, which appears to give excellent agreement with experiment and
other wavefunction-based benchmarks. Since the publication of this recent
communication, the same DMP+ molecule has been cited in numerous subsequent
studies as a prototypical example of the importance of self-interaction
corrections for accurately calculating other chemical systems. In this
correspondence, we have carried out new high-level CCSD(T) analyses on the DMP+
cation to show that DFT actually performs quite well for this system (in
contrast to their conclusion that all DFT functionals fail), whereas the PZ-SIC
approach used by Weber et al. is the outlier that is inconsistent with the
high-level CCSD(T) (coupled-cluster with single and double excitations and
perturbative triples) calculations. Our new findings and analysis for this
system are briefly discussed in this correspondence.Comment: Accepted by Nature Communication
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