315,801 research outputs found
H-Si bonding-induced unusual electronic properties of silicene: a method to identify hydrogen concentration
Hydrogenated silicenes possess peculiar properties owing to the strong H-Si
bonds, as revealed by an investigation using first principles calculations. The
various charge distributions, bond lengths, energy bands, and densities of
states strongly depend on different hydrogen configurations and concentrations.
The competition of strong H-Si bondings and weak sp3 hybridization dominate the
electronic properties. Chair configurations belong to semiconductors, while the
top configurations show a nearly dispersionless energy band at the Fermi level.
Both two systems display H-related partially flat bands at middle energy, and
recovery of low-lying \pi bands during the reduction of concentration. Their
densities of states exhibit prominent peaks at middle energy, and the top
systems have a delta-funtion-like peak at E=0. The intensity of these peaks are
gradually weakened as the concentration decreases, providing an effective
method to identify the H-concentration in scanning tunneling spectroscopy
experiments
Intraday forecasts of a volatility index: Functional time series methods with dynamic updating
As a forward-looking measure of future equity market volatility, the VIX
index has gained immense popularity in recent years to become a key measure of
risk for market analysts and academics. We consider discrete reported intraday
VIX tick values as realisations of a collection of curves observed sequentially
on equally spaced and dense grids over time and utilise functional data
analysis techniques to produce one-day-ahead forecasts of these curves. The
proposed method facilitates the investigation of dynamic changes in the index
over very short time intervals as showcased using the 15-second high-frequency
VIX index values. With the help of dynamic updating techniques, our point and
interval forecasts are shown to enjoy improved accuracy over conventional time
series models.Comment: 29 pages, 5 figures, To appear at the Annals of Operations Researc
On a Poissonian Change-Point Model with Variable Jump Size
A model of Poissonian observation having a jump (change-point) in the
intensity function is considered. Two cases are studied. The first one
corresponds to the situation when the jump size converges to a non-zero limit,
while in the second one the limit is zero. The limiting likelihood ratios in
these two cases are quite different. In the first case, like in the case of a
fixed jump size, the normalized likelihood ratio converges to a log Poisson
process. In the second case, the normalized likelihood ratio converges to a log
Wiener process, and so, the statistical problems of parameter estimation and
hypotheses testing are asymptotically equivalent in this case to the well known
problems of change-point estimation and testing for the model of a signal in
white Gaussian noise. The properties of the maximum likelihood and Bayesian
estimators, as well as those of the general likelihood ratio, Wald's and
Bayesian tests are deduced form the convergence of normalized likelihood
ratios. The convergence of the moments of the estimators is also established.
The obtained theoretical results are illustrated by numerical simulations
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