32,413 research outputs found
Robustness of s-wave Pairing in Electron-Overdoped
Using self consistent mean field and functional renormalization group
approaches we show that s-wave pairing symmetry is robust in the heavily
electron-doped iron chalcogenides .
This is because in these materials the leading antiferromagnetic (AFM) exchange
coupling is between next-nearest-neighbor (NNN) sites while the nearest
neighbor (NN) magnetic exchange coupling is ferromagnetic (FM). This is
different from the iron pnictides, where the NN magnetic exchange coupling is
AFM and leads to strong competition between s-wave and d-wave pairing in the
electron overdoped region. Our finding of a robust s-wave pairing in differs from the d-wave pairing result
obtained by other theories where non-local bare interaction terms and the NNN
term are underestimated. Detecting the pairing symmetry in may hence provide important insights
regarding the mechanism of superconducting pairing in iron based
superconductors.Comment: 10 pages, 16 figure
Explaining 750 GeV diphoton excess from top/bottom partner cascade decay in two-Higgs-doublet model extension
In this paper, we interpret the 750 GeV diphoton excess in the Zee-Babu
extension of the two-Higgs-doublet model by introducing a top partner
()/bottom partner (). In the alignment limit, the 750 GeV resonance is
identified as the heavy CP-even Higgs boson (), which can be sizably
produced via the QCD process or followed by
the decay or . The diphoton decay rate of is greatly
enhanced by the charged singlet scalars predicted in the Zee-Babu extension and
the total width of can be as large as 7 GeV. Under the current LHC
constraints, we scan the parameter space and find that such an extension can
account for the observed diphoton excess.Comment: 19 pages, 4 figures; some discussions and references adde
Video Captioning via Hierarchical Reinforcement Learning
Video captioning is the task of automatically generating a textual
description of the actions in a video. Although previous work (e.g.
sequence-to-sequence model) has shown promising results in abstracting a coarse
description of a short video, it is still very challenging to caption a video
containing multiple fine-grained actions with a detailed description. This
paper aims to address the challenge by proposing a novel hierarchical
reinforcement learning framework for video captioning, where a high-level
Manager module learns to design sub-goals and a low-level Worker module
recognizes the primitive actions to fulfill the sub-goal. With this
compositional framework to reinforce video captioning at different levels, our
approach significantly outperforms all the baseline methods on a newly
introduced large-scale dataset for fine-grained video captioning. Furthermore,
our non-ensemble model has already achieved the state-of-the-art results on the
widely-used MSR-VTT dataset.Comment: CVPR 2018, with supplementary materia
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