17,409 research outputs found
Next-to-leading order QCD corrections to the single top quark production via model-independent t-q-g flavor-changing neutral-current couplings at hadron colliders
We present the calculations of the complete next-to-leading order (NLO) QCD
effects on the single top productions induced by model-independent
flavor-changing neutral-current couplings at hadron colliders. Our results show
that, for the coupling the NLO QCD corrections can enhance the total
cross sections by about 60% and 30%, and for the coupling by about 50%
and 20% at the Tevatron and LHC, respectively, which means that the NLO
corrections can increase the experimental sensitivity to the FCNC couplings by
about 10%30%. Moreover, the NLO corrections reduce the dependence of the
total cross sections on the renormalization or factorization scale
significantly, which lead to increased confidence on the theoretical
predictions. Besides, we also evaluate the NLO corrections to several important
kinematic distributions, and find that for most of them the NLO corrections are
almost the same and do not change the shape of the distributions.Comment: minor changes, version published in PR
Top-Quark Decay at Next-to-Next-to-Leading Order in QCD
We present the complete calculation of the top-quark decay width at
next-to-next-to-leading order in QCD, including next-to-leading electroweak
corrections as well as finite bottom quark mass and boson width effects. In
particular, we also show the first results of the fully differential decay
rates for top-quark semileptonic decay at
next-to-next-to-leading order in QCD. Our method is based on the understanding
of the invariant mass distribution of the final-state jet in the singular limit
from effective field theory. Our result can be used to study arbitrary
infrared-safe observables of top-quark decay with the highest perturbative
accuracy.Comment: 5 pages, 6 figures; version accepted for publication in Physical
Review Letter
Robust rank correlation based screening
Independence screening is a variable selection method that uses a ranking
criterion to select significant variables, particularly for statistical models
with nonpolynomial dimensionality or "large p, small n" paradigms when p can be
as large as an exponential of the sample size n. In this paper we propose a
robust rank correlation screening (RRCS) method to deal with ultra-high
dimensional data. The new procedure is based on the Kendall \tau correlation
coefficient between response and predictor variables rather than the Pearson
correlation of existing methods. The new method has four desirable features
compared with existing independence screening methods. First, the sure
independence screening property can hold only under the existence of a second
order moment of predictor variables, rather than exponential tails or
alikeness, even when the number of predictor variables grows as fast as
exponentially of the sample size. Second, it can be used to deal with
semiparametric models such as transformation regression models and single-index
models under monotonic constraint to the link function without involving
nonparametric estimation even when there are nonparametric functions in the
models. Third, the procedure can be largely used against outliers and influence
points in the observations. Last, the use of indicator functions in rank
correlation screening greatly simplifies the theoretical derivation due to the
boundedness of the resulting statistics, compared with previous studies on
variable screening. Simulations are carried out for comparisons with existing
methods and a real data example is analyzed.Comment: Published in at http://dx.doi.org/10.1214/12-AOS1024 the Annals of
Statistics (http://www.imstat.org/aos/) by the Institute of Mathematical
Statistics (http://www.imstat.org). arXiv admin note: text overlap with
arXiv:0903.525
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