33,887 research outputs found
Nonparametric Independence Screening in Sparse Ultra-High Dimensional Additive Models
A variable screening procedure via correlation learning was proposed Fan and
Lv (2008) to reduce dimensionality in sparse ultra-high dimensional models.
Even when the true model is linear, the marginal regression can be highly
nonlinear. To address this issue, we further extend the correlation learning to
marginal nonparametric learning. Our nonparametric independence screening is
called NIS, a specific member of the sure independence screening. Several
closely related variable screening procedures are proposed. Under the
nonparametric additive models, it is shown that under some mild technical
conditions, the proposed independence screening methods enjoy a sure screening
property. The extent to which the dimensionality can be reduced by independence
screening is also explicitly quantified. As a methodological extension, an
iterative nonparametric independence screening (INIS) is also proposed to
enhance the finite sample performance for fitting sparse additive models. The
simulation results and a real data analysis demonstrate that the proposed
procedure works well with moderate sample size and large dimension and performs
better than competing methods.Comment: 48 page
Richly Activated Graph Convolutional Network for Action Recognition with Incomplete Skeletons
Current methods for skeleton-based human action recognition usually work with
completely observed skeletons. However, in real scenarios, it is prone to
capture incomplete and noisy skeletons, which will deteriorate the performance
of traditional models. To enhance the robustness of action recognition models
to incomplete skeletons, we propose a multi-stream graph convolutional network
(GCN) for exploring sufficient discriminative features distributed over all
skeleton joints. Here, each stream of the network is only responsible for
learning features from currently unactivated joints, which are distinguished by
the class activation maps (CAM) obtained by preceding streams, so that the
activated joints of the proposed method are obviously more than traditional
methods. Thus, the proposed method is termed richly activated GCN (RA-GCN),
where the richly discovered features will improve the robustness of the model.
Compared to the state-of-the-art methods, the RA-GCN achieves comparable
performance on the NTU RGB+D dataset. Moreover, on a synthetic occlusion
dataset, the performance deterioration can be alleviated by the RA-GCN
significantly.Comment: Accepted by ICIP 2019, 5 pages, 3 figures, 3 table
Combining Local Appearance and Holistic View: Dual-Source Deep Neural Networks for Human Pose Estimation
We propose a new learning-based method for estimating 2D human pose from a
single image, using Dual-Source Deep Convolutional Neural Networks (DS-CNN).
Recently, many methods have been developed to estimate human pose by using pose
priors that are estimated from physiologically inspired graphical models or
learned from a holistic perspective. In this paper, we propose to integrate
both the local (body) part appearance and the holistic view of each local part
for more accurate human pose estimation. Specifically, the proposed DS-CNN
takes a set of image patches (category-independent object proposals for
training and multi-scale sliding windows for testing) as the input and then
learns the appearance of each local part by considering their holistic views in
the full body. Using DS-CNN, we achieve both joint detection, which determines
whether an image patch contains a body joint, and joint localization, which
finds the exact location of the joint in the image patch. Finally, we develop
an algorithm to combine these joint detection/localization results from all the
image patches for estimating the human pose. The experimental results show the
effectiveness of the proposed method by comparing to the state-of-the-art
human-pose estimation methods based on pose priors that are estimated from
physiologically inspired graphical models or learned from a holistic
perspective.Comment: CVPR 201
Merging Rates of the First Objects and the Formation of First Mini-Filaments in Models with Massive Neutrinos
We study the effect of massive neutrinos on the formation and evolution of
the first filaments containing the first star-forming halos of mass
M~10^{6}M_sun at z~20. With the help of the extended Press-Schechter formalism,
we evaluate analytically the rates of merging of the first star-forming halos
into zero-dimensional larger halos and one-dimensional first filaments. It is
shown that as the neutrino mass fraction f_{\nu} increases, the
halo-to-filament merging rate increases while the halo-to-halo merging rate
decreases sharply. For f_{\nu}<=0.04, the halo-to-filament merging rate is
negligibly low at all filament mass scales, while for f_{\nu}>=0.07 the
halo-to-filament merging rate exceeds 0.1 at the characteristic filament mass
scale of ~10^{9}M_sun. The distribution of the redshifts at which the first
filaments ultimately collapse along their longest axes is derived and found to
have a sharp maximum at z~8. We also investigate the formation and evolution of
the second generation filaments which contain the first galaxies of mass
10^{9}M_sun at z=8 as the parent of the first generation filaments. A similar
trend is found: For f_{\nu}>= 0.07 the rate of clustering of the first galaxies
into the second-generation filaments exceeds 0.3 at the characteristic mass
scale of ~10^{11}M_sun. The longest-axis collapse of these second-generation
filaments are found to occur at z~3. The implications of our results on the
formation of massive high-z galaxies and the early metal enrichment of the
intergalactic media by supernova-driven outflows, and possibility of
constraining the neutrino mass from the mass distribution of the high-z central
blackholes are discussed.Comment: Accepted for publication in ApJ, mistakes in the calculation of the
merging rates corrected, feasibility study of constraining neutrino mass with
high-z quasar luminosity function presented, discussion improved, 7 figure
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