293,254 research outputs found
Theory for effects of pressure on heavy-fermion alloys
The effects of pressure on heavy-fermion alloys are studied in the framework
of Yoshimori-Kasai model under the coherent potential approximation. A unified
picture is presented for both the electron-type heavy-fermion systems and the
hole-type heavy-fermion systems. The density of states of electrons is
calculated over the whole range of the doping concentration under the applied
pressure. The Kondo temperature, the specific-heat coefficient, and the
electrical resistivity are obtained, in agreement with the experiments
qualitatively. The contrasting pressure-dependent effects for two types of
heavy-fermion alloys are discussed to reveal the coherence in the system under
pressure.Comment: 8 figure
On Noether approach in the cosmological model with scalar and gauge fields: symmetries and the selection rule
In this paper, based on the works of Capozziello et al., we have studied the
Noether symmetry approach in the cosmological model with scalar and gauge
fields proposed recently by Soda et al. The correct Noether symmetries and
related Lie algebra are given according to the minisuperspace quantum
cosmological model. The Wheeler-De Witt (WDW) equation is presented after
quantization and the classical trajectories are then obtained in the
semi-classical limit. The oscillating features of the wave function in the
cosmic evolution recover the so-called Hartle criterion, and the selection rule
in minisuperspace quantum cosmology is strengthened. Then we have realized now
the proposition that Noether symmetries select classical universes
A Linear Algorithm for Finding the Sink of Unique Sink Orientations on Grids
An orientation of a grid is called unique sink orientation (USO) if each of
its nonempty subgrids has a unique sink. Particularly, the original grid itself
has a unique global sink. In this work we investigate the problem of how to
find the global sink using minimum number of queries to an oracle. There are
two different oracle models: the vertex query model where the orientation of
all edges incident to the queried vertex are provided, and the edge query model
where the orientation of the queried edge is provided. In the 2-dimensional
case, we design an optimal linear deterministic algorithm for the vertex query
model and an almost linear deterministic algorithm for the edge query model,
previously the best known algorithms run in O(N logN) time for the vertex query
model and O(N^1.404) time for the edge query model
Your Actions Tell Where You Are: Uncovering Twitter Users in a Metropolitan Area
Twitter is an extremely popular social networking platform. Most Twitter
users do not disclose their locations due to privacy concerns. Although
inferring the location of an individual Twitter user has been extensively
studied, it is still missing to effectively find the majority of the users in a
specific geographical area without scanning the whole Twittersphere, and
obtaining these users will result in both positive and negative significance.
In this paper, we propose LocInfer, a novel and lightweight system to tackle
this problem. LocInfer explores the fact that user communications in Twitter
exhibit strong geographic locality, which we validate through large-scale
datasets. Based on the experiments from four representative metropolitan areas
in U.S., LocInfer can discover on average 86.6% of the users with 73.2%
accuracy in each area by only checking a small set of candidate users. We also
present a countermeasure to the users highly sensitive to location privacy and
show its efficacy by simulations.Comment: Accepted by IEEE Conference on Communications and Network Security
(CNS) 201
Existence and multiplicity of solutions for nonlocal systems with Kirchhoff type
Firstly, we use Nehari manifold and Mountain Pass Lemma to prove an existence
result of positive solutions for a class of nonlocal elliptic system with
Kirchhoff type. Then a multiplicity result is established by cohomological
index of Fadell and Rabinowitz. We also consider the critical case and prove
existence of positive least energy solution when the parameter is
sufficiently large.Comment: appears in Acta. Math. Applica. Sinica, 201
Weighted Data Normalization Based on Eigenvalues for Artificial Neural Network Classification
Artificial neural network (ANN) is a very useful tool in solving learning
problems. Boosting the performances of ANN can be mainly concluded from two
aspects: optimizing the architecture of ANN and normalizing the raw data for
ANN. In this paper, a novel method which improves the effects of ANN by
preprocessing the raw data is proposed. It totally leverages the fact that
different features should play different roles. The raw data set is firstly
preprocessed by principle component analysis (PCA), and then its principle
components are weighted by their corresponding eigenvalues. Several aspects of
analysis are carried out to analyze its theory and the applicable occasions.
Three classification problems are launched by an active learning algorithm to
verify the proposed method. From the empirical results, conclusion comes to the
fact that the proposed method can significantly improve the performance of ANN
Graph Embedding with Rich Information through Heterogeneous Network
Graph embedding has attracted increasing attention due to its critical
application in social network analysis. Most existing algorithms for graph
embedding only rely on the typology information and fail to use the copious
information in nodes as well as edges. As a result, their performance for many
tasks may not be satisfactory. In this paper, we proposed a novel and general
framework of representation learning for graph with rich text information
through constructing a bipartite heterogeneous network. Specially, we designed
a biased random walk to explore the constructed heterogeneous network with the
notion of flexible neighborhood. The efficacy of our method is demonstrated by
extensive comparison experiments with several baselines on various datasets. It
improves the Micro-F1 and Macro-F1 of node classification by 10% and 7% on Cora
dataset.Comment: 9 pages, 7 figures, 4 table
TrueTop: A Sybil-Resilient System for User Influence Measurement on Twitter
Influential users have great potential for accelerating information
dissemination and acquisition on Twitter. How to measure the influence of
Twitter users has attracted significant academic and industrial attention.
Existing influential measurement techniques, however, are vulnerable to sybil
users that are thriving on Twitter. Although sybil defenses for online social
networks have been extensively investigated, they commonly assume unique
mappings from human-established trust relationships to online social
associations and thus do not apply to Twitter where users can freely follow
each other. This paper presents TrueTop, the first sybil-resilient system to
measure the influence of Twitter users. TrueTop is firmly rooted in two
observations from real Twitter datasets. First, although non-sybil users may
incautiously follow strangers, they tend to be more careful and selective in
retweeting, replying to, and mentioning other Twitter users. Second,
influential users usually get much more retweets, replies, and mentions than
non-influential users. Detailed theoretical studies and synthetic simulations
show that TrueTop can generate very accurate influence measurement results and
also have strong resilience to sybil attacks.Comment: Accepted by IEEE/ACM Transactions on Networking. This is the Final
versio
Reduce Meaningless Words for Joint Chinese Word Segmentation and Part-of-speech Tagging
Conventional statistics-based methods for joint Chinese word segmentation and
part-of-speech tagging (S&T) have generalization ability to recognize new words
that do not appear in the training data. An undesirable side effect is that a
number of meaningless words will be incorrectly created. We propose an
effective and efficient framework for S&T that introduces features to
significantly reduce meaningless words generation. A general lexicon, Wikepedia
and a large-scale raw corpus of 200 billion characters are used to generate
word-based features for the wordhood. The word-lattice based framework consists
of a character-based model and a word-based model in order to employ our
word-based features. Experiments on Penn Chinese treebank 5 show that this
method has a 62.9% reduction of meaningless word generation in comparison with
the baseline. As a result, the F1 measure for segmentation is increased to
0.984
The stochastic nature induced by laser noise in narrow transitions
We use a probabilistic method to describe the effect of laser noise on the
laser-atom interaction, in the case that the atom is a two level system without
spontaneous emission. The stochastic differential equation for the laser-atom
interaction is analyzed in the sense of perturbation approach, and we construct
a stochastic process corresponding to the time evolution of the atom's wave
function, whose extra randomness is induced by the laser noise. It also
provides the layout of a theory for the possible experiment of measuring the
laser line width by driving a narrow atomic transition
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