5,987 research outputs found
Searching for the signal of dark matter and photon associated production at the LHC beyond leading order
We study the signal of dark matter and photon associated production induced
by the vector and axial-vector operators at the LHC, including the QCD
next-to-leading order (NLO) effects. We find that the QCD NLO corrections
reduce the dependence of the total cross sections on the factorization and
renormalization scales, and the factors increase with the increasing of the
dark matter mass, which can be as large as about 1.3 for both the vector and
axial-vector operators. Using our QCD NLO results, we improve the constraints
on the new physics scale from the results of the recent CMS experiment.
Moreover, we show the Monte Carlo simulation results for detecting the
\gamma+\Slash{E}_{T} signal at the QCD NLO level, and present the integrated
luminosity needed for a discovery at the 14 TeV LHC . If the signal
is not observed, the lower limit on the new physics scale can be set.Comment: 19 pages, 18 figures, 2 tables, version published in Phys.Rev.
Phenomenology of an Extended Higgs Portal Inflation Model after Planck 2013
We consider an extended inflation model in the frame of Higgs portal model,
assuming a nonminimal coupling of the scalar field to the gravity. Using the
new data from Planck and other relevant astrophysical data, we obtain
the relation between the nonminimal coupling and the self-coupling
needed to drive the inflation, and find that this inflationary model
is favored by the astrophysical data. Furthermore, we discuss the constraints
on the model parameters from the experiments of particle physics, especially
the recent Higgs data at the LHC.Comment: 21 pages, 8 figures; Version published in EPJ
RANSAC-NN: Unsupervised Image Outlier Detection using RANSAC
Image outlier detection (OD) is crucial for ensuring the quality and accuracy
of image datasets used in computer vision tasks. The majority of OD algorithms,
however, have not been targeted toward image data. Consequently, the results of
applying such algorithms to images are often suboptimal. In this work, we
propose RANSAC-NN, a novel unsupervised OD algorithm specifically designed for
images. By comparing images in a RANSAC-based approach, our algorithm
automatically predicts the outlier score of each image without additional
training or label information. We evaluate RANSAC-NN against state-of-the-art
OD algorithms on 15 diverse datasets. Without any hyperparameter tuning,
RANSAC-NN consistently performs favorably in contrast to other algorithms in
almost every dataset category. Furthermore, we provide a detailed analysis to
understand each RANSAC-NN component, and we demonstrate its potential
applications in image mislabeled detection. Code for RANSAC-NN is provided at
https://github.com/mxtsai/ransac-nnComment: 19 pages, 18 figure
- …