17,039 research outputs found
Cosmological Constraints on Variable Warm Dark Matter
Although CDM model is very successful in many aspects, it has been
seriously challenged. Recently, warm dark matter (WDM) remarkably rose as an
alternative of cold dark matter (CDM). In the literature, many attempts have
been made to determine the equation-of-state parameter (EoS) of WDM. However,
in most of the previous works, it is usually assumed that the EoS of dark
matter (DM) is constant (and usually the EoS of dark energy is also constant).
Obviously, this assumption is fairly restrictive. It is more natural to assume
a variable EoS for WDM (and dark energy). In the present work, we try to
constrain the EoS of variable WDM with the current cosmological observations.
We find that the best fits indicate WDM, while CDM is still consistent with the
current observational data. However, CDM is still better than WDM
models from the viewpoint of goodness-of-fit. So, in order to distinguish WDM
and CDM, the further observations on the small/galactic scale are required. On
the other hand, in this work we also consider WDM whose EoS is constant, while
the role of dark energy is played by various models. We find that the
cosmological constraint on the constant EoS of WDM is fairly robust.Comment: 11 pages, 6 figures, 1 table, revtex4; v2: discussions added, Phys.
Lett. B in press; v3: published versio
Dense CNN Learning with Equivalent Mappings
Large receptive field and dense prediction are both important for achieving
high accuracy in pixel labeling tasks such as semantic segmentation. These two
properties, however, contradict with each other. A pooling layer (with stride
2) quadruples the receptive field size but reduces the number of predictions to
25\%. Some existing methods lead to dense predictions using computations that
are not equivalent to the original model. In this paper, we propose the
equivalent convolution (eConv) and equivalent pooling (ePool) layers, leading
to predictions that are both dense and equivalent to the baseline CNN model.
Dense prediction models learned using eConv and ePool can transfer the baseline
CNN's parameters as a starting point, and can inverse transfer the learned
parameters in a dense model back to the original one, which has both fast
testing speed and high accuracy. The proposed eConv and ePool layers have
achieved higher accuracy than baseline CNN in various tasks, including semantic
segmentation, object localization, image categorization and apparent age
estimation, not only in those tasks requiring dense pixel labeling.Comment: submitted to NIPS 201
Martingale Hardy spaces with variable exponents
In this paper, we introduce Hardy spaces with variable exponents defined on a
probability space and develop the martingale theory of variable Hardy spaces.
We prove the weak type and strong type inequalities on Doob's maximal operator
and get a -atomic decomposition for Hardy martingale
spaces associated with conditional square functions. As applications, we obtain
a dual theorem and the John-Nirenberg inequalities in the frame of variable
exponents. The key ingredient is that we find a condition with probabilistic
characterization of to replace the so-called log-H\"{o}lder
continuity condition in Comment: Banach Journal of Mathematical Analysis, to appea
Content-Centric Multicast Beamforming in Cache-Enabled Cloud Radio Access Networks
Multicast transmission and wireless caching are effective ways of reducing
air and backhaul traffic load in wireless networks. This paper proposes to
incorporate these two key ideas for content-centric multicast transmission in a
cloud radio access network (RAN) where multiple base stations (BSs) are
connected to a central processor (CP) via finite-capacity backhaul links. Each
BS has a cache with finite storage size and is equipped with multiple antennas.
The BSs cooperatively transmit contents, which are either stored in the local
cache or fetched from the CP, to multiple users in the network. Users
requesting a same content form a multicast group and are served by a same
cluster of BSs cooperatively using multicast beamforming. Assuming fixed cache
placement, this paper investigates the joint design of multicast beamforming
and content-centric BS clustering by formulating an optimization problem of
minimizing the total network cost under the quality-of-service (QoS)
constraints for each multicast group. The network cost involves both the
transmission power and the backhaul cost. We model the backhaul cost using the
mixed -norm of beamforming vectors. To solve this non-convex
problem, we first approximate it using the semidefinite relaxation (SDR) method
and concave smooth functions. We then propose a difference of convex functions
(DC) programming algorithm to obtain suboptimal solutions and show the
connection of three smooth functions. Simulation results validate the advantage
of multicasting and show the effects of different cache size and caching
policies in cloud RAN.Comment: IEEE Globecom 201
Content-Centric Sparse Multicast Beamforming for Cache-Enabled Cloud RAN
This paper presents a content-centric transmission design in a cloud radio
access network (cloud RAN) by incorporating multicasting and caching. Users
requesting a same content form a multicast group and are served by a same
cluster of base stations (BSs) cooperatively. Each BS has a local cache and it
acquires the requested contents either from its local cache or from the central
processor (CP) via backhaul links. We investigate the dynamic content-centric
BS clustering and multicast beamforming with respect to both channel condition
and caching status. We first formulate a mixed-integer nonlinear programming
problem of minimizing the weighted sum of backhaul cost and transmit power
under the quality-of-service constraint for each multicast group. Theoretical
analysis reveals that all the BSs caching a requested content can be included
in the BS cluster of this content, regardless of the channel conditions. Then
we reformulate an equivalent sparse multicast beamforming (SBF) problem. By
adopting smoothed -norm approximation and other techniques, the SBF
problem is transformed into the difference of convex (DC) programs and
effectively solved using the convex-concave procedure algorithms. Simulation
results demonstrate significant advantage of the proposed content-centric
transmission. The effects of three heuristic caching strategies are also
evaluated.Comment: To appear in IEEE Trans. on Wireless Communication
Improving Wireless Physical Layer Security via D2D Communication
This paper investigates the physical layer security issue of a
device-to-device (D2D) underlaid cellular system with a multi-antenna base
station (BS) and a multi-antenna eavesdropper. To investigate the potential of
D2D communication in improving network security, the conventional network
without D2D users (DUs) is first considered. It is shown that the problem of
maximizing the sum secrecy rate (SR) of cellular users (CUs) for this special
case can be transformed to an assignment problem and optimally solved. Then, a
D2D underlaid network is considered. Since the joint optimization of resource
block (RB) allocation, CU-DU matching and power control is a mixed integer
programming, the problem is difficult to handle. Hence, the RB assignment
process is first conducted by ignoring D2D communication, and an iterative
algorithm is then proposed to solve the remaining problem. Simulation results
show that the sum SR of CUs can be greatly increased by D2D communication, and
compared with the existing schemes, a better secrecy performance can be
obtained by the proposed algorithms.Comment: 7 pages, 4 figures, accepted for presentation at the 2018 Global
Communications Conference (IEEE GLOBECOM
Detection of the Prodromal Phase of Bipolar Disorder from Psychological and Phonological Aspects in Social Media
Seven out of ten people with bipolar disorder are initially misdiagnosed and
thirty percent of individuals with bipolar disorder will commit suicide.
Identifying the early phases of the disorder is one of the key components for
reducing the full development of the disorder. In this study, we aim at
leveraging the data from social media to design predictive models, which
utilize the psychological and phonological features, to determine the onset
period of bipolar disorder and provide insights on its prodrome. This study
makes these discoveries possible by employing a novel data collection process,
coined as Time-specific Subconscious Crowdsourcing, which helps collect a
reliable dataset that supplements diagnosis information from people suffering
from bipolar disorder. Our experimental results demonstrate that the proposed
models could greatly contribute to the regular assessments of people with
bipolar disorder, which is important in the primary care setting
non-linear massive gravity and the cosmic acceleration
Inspired by the non-linear massive gravity, we propose a new kind of
modified gravity model, namely non-linear massive gravity, by adding the
dRGT mass term reformulated in the vierbein formalism, to the theory. We
then investigate the cosmological evolution of massive gravity, and
constrain it by using the latest observational data. We find that it slightly
favors a crossing of the phantom divide line from the quintessence-like phase
() to the phantom-like one () as redshift decreases.Comment: 12 pages, 4 figures, revtex4, Commun. Theor. Phys. in press; v2:
published versio
ALMA Submillimeter Continuum Imaging of the Host Galaxies of GRB021004 and GRB080607
We report 345 GHz continuum observations of the host galaxies of gamma-ray
bursts (GRBs) 021004 and 080607 at z>2 using the Atacama Large
Millimeter/Submillimeter Array (ALMA) in Cycle 0. Of the two bursts, GRB021004
is one of the few GRBs that originates in a Lyman limit host, while GRB080607
is classified as a "dark burst" and its host galaxy is a candidate of dusty
star forming galaxy at z~3. With an order of magnitude improvement in the
sensitivities of the new imaging searches, we detect the host galaxy of
GRB080607 with a flux of S_{345} = 0.31+/-0.09 mJy and a corresponding infrared
luminosity of L_{IR}=(2.4-4.5)x10^{11} L_sun. However, the host galaxy of
GRB021004 remains undetected and the ALMA observations allow us to place a
3-sigma upper limit of L_{IR}<3.1x10^{11} L_sun for the host galaxy. The
continuum imaging observations show that the two galaxies are not ultraluminous
infrared galaxies but are at the faintest end of the dusty galaxy population
that gives rise to the submillimeter extragalactic background light. The
derived star formation rates of the two GRB host galaxies are less than 100
M_sun yr^{-1}, which are broadly consistent with optical measurements. The
result suggests that the large extinction (A_V~3) in the afterglow of GRB080607
is confined along its particularly dusty sightline, and not representative of
the global properties of the host galaxy.Comment: 5 pages, 3 figures; accepted for publication in ApJ Letter
Topological and Geometric Universal Thermodynamics in Conformal Field Theory
Universal thermal data in conformal field theory (CFT) offer a valuable means
for characterizing and classifying criticality. With improved tensor network
techniques, we investigate the universal thermodynamics on a nonorientable
minimal surface, the crosscapped disk (or real projective plane,
). Through a cut-and-sew process, is
topologically equivalent to a cylinder with rainbow and crosscap boundaries. We
uncover that the crosscap contributes a fractional topological term
related to nonorientable genus, with a universal
constant in two-dimensional CFT, while the rainbow boundary gives rise to a
geometric term , with the manifold size and
the central charge. We have also obtained analytically the logarithmic rainbow
term by CFT calculations, and discuss its connection to the renowned
Cardy-Peschel conical singularity.Comment: 4 pages + references, 7 figures, 2 tables, supplementary material;
published versio
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