41,455 research outputs found
The Peregrine rogue waves induced by interaction between the continuous wave and soliton
Based on the soliton solution on a continuous wave background for an
integrable Hirota equation, the reduction mechanism and the characteristics of
the Peregrine rogue wave in the propagation of femtosecond pulses of optical
fiber are discussed. The results show that there exist two processes of the
formation of the Peregrine rogue wave: one is the localized process of the
continuous wave background, and the other is the reduction process of the
periodization of the bright soliton. The characteristics of the Peregrine rogue
wave are exhibited by strong temporal and spatial localization. Also, various
initial excitations of the Peregrine rogue wave are performed and the results
show that the Peregrine rogue wave can be excited by a small localized (single
peak) perturbation pulse of the continuous wave background, even for the
nonintegrable case. The numerical simulations show that the Peregrine rogue
wave is unstable. Finally, through a realistic example, the influence of the
self-frequency shift to the dynamics of the Peregrine rogue wave is discussed.
The results show that in the absence of the self-frequency shift, the Peregrine
rogue wave can split into several subpuslses; however, when the self-frequency
shift is considered, the Peregrine rogue wave no longer splits and exhibits
mainly a peak changing and an increasing evolution property of the field
amplitude.Comment: The paper has been accepted by Phys. Rev.
Discriminating dark energy models by using the statefinder hierarchy and the growth rate of matter perturbations
We apply the Statefinder hierarchy and the growth rate of matter
perturbations to discriminate modified Chaplygin gas (MCG), generalized
Chaplygin gas (GCG), superfluid Chaplygin gas (SCG), purely kinetic k-essence
(PKK), and CDM model. We plot the evolutional trajectories of these
models in the statefinder plane and in the composite diagnostic plane. We find
that GCG, MCG, SCG, PKK, and CDM can be distinguished well from each
other at the present epoch by using the composite diagnostic . Using other combinations, such as ,
, , and , some of these five dark energy models cannot be distinguished.Comment: 12 pages, 9 figure
BigRoots: An Effective Approach for Root-cause Analysis of Stragglers in Big Data System
Stragglers are commonly believed to have a great impact on the performance of
big data system. However, the reason to cause straggler is complicated.
Previous works mostly focus on straggler detection, schedule level optimization
and coarse-grained cause analysis. These methods cannot provide valuable
insights to help users optimize their programs. In this paper, we propose
BigRoots, a general method incorporating both framework and system features for
root-cause analysis of stragglers in big data system. BigRoots considers
features from big data framework such as shuffle read/write bytes and JVM
garbage collection time, as well as system resource utilization such as CPU,
I/O and network, which is able to detect both internal and external root causes
of stragglers. We verify BigRoots by injecting high resource utilization across
different system components and perform case studies to analyze different
workloads in Hibench. The experimental results demonstrate that BigRoots is
effective to identify the root cause of stragglers and provide useful guidance
for performance optimization
Go-ICP: A Globally Optimal Solution to 3D ICP Point-Set Registration
The Iterative Closest Point (ICP) algorithm is one of the most widely used
methods for point-set registration. However, being based on local iterative
optimization, ICP is known to be susceptible to local minima. Its performance
critically relies on the quality of the initialization and only local
optimality is guaranteed. This paper presents the first globally optimal
algorithm, named Go-ICP, for Euclidean (rigid) registration of two 3D
point-sets under the L2 error metric defined in ICP. The Go-ICP method is based
on a branch-and-bound (BnB) scheme that searches the entire 3D motion space
SE(3). By exploiting the special structure of SE(3) geometry, we derive novel
upper and lower bounds for the registration error function. Local ICP is
integrated into the BnB scheme, which speeds up the new method while
guaranteeing global optimality. We also discuss extensions, addressing the
issue of outlier robustness. The evaluation demonstrates that the proposed
method is able to produce reliable registration results regardless of the
initialization. Go-ICP can be applied in scenarios where an optimal solution is
desirable or where a good initialization is not always available.Comment: to appear in T-PAMI 2016 (IEEE Transactions on Pattern Analysis and
Machine Intelligence
Control of high power pulse extracted from the maximally compressed pulse in a nonlinear optical fiber
We address the possibility to control high power pulses extracted from the
maximally compressed pulse in a nonlinear optical fiber by adjusting the
initial excitation parameters. The numerical results show that the power,
location and splitting order number of the maximally compressed pulse and the
transmission features of high power pulses extracted from the maximally
compressed pulse can be manipulated through adjusting the modulation amplitude,
width, and phase of the initial Gaussian-type perturbation pulse on a
continuous wave background.Comment: 12 pages, 7 figures, The paper has been accepted by Rom. Rep. Phy
Light mesons within the basis light-front quantization framework
We study the light-unflavored mesons as relativistic bound states in the
nonperturbative Hamiltonian formalism of the basis light-front quantization
(BLFQ) approach. The dynamics for the valence quarks of these mesons is
specified by an effective Hamiltonian containing the one-gluon exchange
interaction and the confining potentials both introduced in our previous work
on heavy quarkonia, supplemented additionally by a pseudoscalar contact
interaction. We diagonalize this Hamiltonian in our basis function
representation to obtain the mass spectrum and the light-front wave functions
(LFWFs). Based on these LFWFs, we then study the structure of these mesons by
computing the electromagnetic form factors, the decay constants, the parton
distribution amplitudes (PDAs), and the parton distribution functions (PDFs).
Our results are comparable to those from experiments and other theoretical
models.Comment: 12 pages, 6 figure
The evolution of the power law k-essence cosmology
We investigate the evolution of the power law k-essence field in FRWL
spacetime. The autonomous dynamical system and critical points are obtained.
The corresponding cosmological parameters, such as and
, are calculated at these critical points. We find it is possible to
achieve an equation of state crossing through for k-essence field. The
results we obtained indicate that the power law k-essence dark energy model can
be compatible with observations.Comment: 9 pages, 4 figures, some comments are adde
A Fast Globally Linearly Convergent Algorithm for the Computation of Wasserstein Barycenters
In this paper, we consider the problem of computing a Wasserstein barycenter
for a set of discrete probability distributions with finite supports, which
finds many applications in areas such as statistics, machine learning and image
processing. When the support points of the barycenter are pre-specified, this
problem can be modeled as a linear program (LP) whose problem size can be
extremely large. To handle this large-scale LP, we analyse the structure of its
dual problem, which is conceivably more tractable and can be reformulated as a
well-structured convex problem with 3 kinds of block variables and a coupling
linear equality constraint. We then adapt a symmetric Gauss-Seidel based
alternating direction method of multipliers (sGS-ADMM) to solve the resulting
dual problem and establish its global convergence and global linear convergence
rate. As a critical component for efficient computation, we also show how all
the subproblems involved can be solved exactly and efficiently. This makes our
method suitable for computing a Wasserstein barycenter on a large dataset,
without introducing an entropy regularization term as is commonly practiced. In
addition, our sGS-ADMM can be used as a subroutine in an alternating
minimization method to compute a barycenter when its support points are not
pre-specified. Numerical results on synthetic datasets and image datasets
demonstrate that our method is highly competitive for solving large-scale
problems, in comparison to two existing representative methods and the
commercial software Gurobi
Learning from Noisy Labels with Distillation
The ability of learning from noisy labels is very useful in many visual
recognition tasks, as a vast amount of data with noisy labels are relatively
easy to obtain. Traditionally, the label noises have been treated as
statistical outliers, and approaches such as importance re-weighting and
bootstrap have been proposed to alleviate the problem. According to our
observation, the real-world noisy labels exhibit multi-mode characteristics as
the true labels, rather than behaving like independent random outliers. In this
work, we propose a unified distillation framework to use side information,
including a small clean dataset and label relations in knowledge graph, to
"hedge the risk" of learning from noisy labels. Furthermore, unlike the
traditional approaches evaluated based on simulated label noises, we propose a
suite of new benchmark datasets, in Sports, Species and Artifacts domains, to
evaluate the task of learning from noisy labels in the practical setting. The
empirical study demonstrates the effectiveness of our proposed method in all
the domains
Progressive Representation Adaptation for Weakly Supervised Object Localization
We address the problem of weakly supervised object localization where only
image-level annotations are available for training object detectors. Numerous
methods have been proposed to tackle this problem through mining object
proposals. However, a substantial amount of noise in object proposals causes
ambiguities for learning discriminative object models. Such approaches are
sensitive to model initialization and often converge to undesirable local
minimum solutions. In this paper, we propose to overcome these drawbacks by
progressive representation adaptation with two main steps: 1) classification
adaptation and 2) detection adaptation. In classification adaptation, we
transfer a pre-trained network to a multi-label classification task for
recognizing the presence of a certain object in an image. Through the
classification adaptation step, the network learns discriminative
representations that are specific to object categories of interest. In
detection adaptation, we mine class-specific object proposals by exploiting two
scoring strategies based on the adapted classification network. Class-specific
proposal mining helps remove substantial noise from the background clutter and
potential confusion from similar objects. We further refine these proposals
using multiple instance learning and segmentation cues. Using these refined
object bounding boxes, we fine-tune all the layer of the classification network
and obtain a fully adapted detection network. We present detailed experimental
validation on the PASCAL VOC and ILSVRC datasets. Experimental results
demonstrate that our progressive representation adaptation algorithm performs
favorably against the state-of-the-art methods.Comment: Project page: https://sites.google.com/site/lidonggg930/ws
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