9,611 research outputs found
Stationary viscoelastic wave fields generated by scalar wave functions
The usual Helmholtz decomposition gives a decomposition of any vector valued
function into a sum of gradient of a scalar function and rotation of a vector
valued function under some mild condition. In this paper we show that the
vector valued function of the second term i.e. the divergence free part of this
decomposition can be further decomposed into a sum of a vector valued function
polarized in one component and the rotation of a vector valued function also
polarized in the same component. Hence the divergence free part only depends on
two scalar functions. Further we show the so called completeness of
representation associated to this decomposition for the stationary wave field
of a homogeneous, isotropic viscoelastic medium. That is by applying this
decomposition to this wave field, we can show that each of these three scalar
functions satisfies a Helmholtz equation. Our completeness of representation is
useful for solving boundary value problem in a cylindrical domain for several
partial differential equations of systems in mathematical physics such as
stationary isotropic homogeneous elastic/viscoelastic equations of system and
stationary isotropic homogeneous Maxwell equations of system. As an example, by
using this completeness of representation, we give the solution formula for
torsional deformation of a pendulum of cylindrical shaped homogeneous isotropic
viscoelastic medium
Opinion formation driven by PageRank node influence on directed networks
We study a two states opinion formation model driven by PageRank node
influence and report an extensive numerical study on how PageRank affects
collective opinion formations in large-scale empirical directed networks. In
our model the opinion of a node can be updated by the sum of its neighbor
nodes' opinions weighted by the node influence of the neighbor nodes at each
step. We consider PageRank probability and its sublinear power as node
influence measures and investigate evolution of opinion under various
conditions. First, we observe that all networks reach steady state opinion
after a certain relaxation time. This time scale is decreasing with the
heterogeneity of node influence in the networks. Second, we find that our model
shows consensus and non-consensus behavior in steady state depending on types
of networks: Web graph, citation network of physics articles, and LiveJournal
social network show non-consensus behavior while Wikipedia article network
shows consensus behavior. Third, we find that a more heterogeneous influence
distribution leads to a more uniform opinion state in the cases of Web graph,
Wikipedia, and Livejournal. However, the opposite behavior is observed in the
citation network. Finally we identify that a small number of influential nodes
can impose their own opinion on significant fraction of other nodes in all
considered networks. Our study shows that the effects of heterogeneity of node
influence on opinion formation can be significant and suggests further
investigations on the interplay between node influence and collective opinion
in networks.Comment: 10 pages, 6 figures. Published in Physica A 436, 707-715 (2015
Effect of changing data size on eigenvalues in the Korean and Japanese stock markets
In this study, we attempted to determine how eigenvalues change, according to
random matrix theory (RMT), in stock market data as the number of stocks
comprising the correlation matrix changes. Specifically, we tested for changes
in the eigenvalue properties as a function of the number and type of stocks in
the correlation matrix. We determined that the value of the eigenvalue
increases in proportion with the number of stocks. Furthermore, we noted that
the largest eigenvalue maintains its identical properties, regardless of the
number and type, whereas other eigenvalues evidence different features
Statistical Investigation of Connected Structures of Stock Networks in Financial Time Series
In this study, we have investigated factors of determination which can affect
the connected structure of a stock network. The representative index for
topological properties of a stock network is the number of links with other
stocks. We used the multi-factor model, extensively acknowledged in financial
literature. In the multi-factor model, common factors act as independent
variables while returns of individual stocks act as dependent variables. We
calculated the coefficient of determination, which represents the measurement
value of the degree in which dependent variables are explained by independent
variables. Therefore, we investigated the relationship between the number of
links in the stock network and the coefficient of determination in the
multi-factor model. We used individual stocks traded on the market indices of
Korea, Japan, Canada, Italy and the UK. The results are as follows. We found
that the mean coefficient of determination of stocks with a large number of
links have higher values than those with a small number of links with other
stocks. These results suggest that common factors are significantly
deterministic factors to be taken into account when making a stock network.
Furthermore, stocks with a large number of links to other stocks can be more
affected by common factors.Comment: 11 pages, 2 figure
Highlighting Entanglement of Cultures via Ranking of Multilingual Wikipedia Articles
How different cultures evaluate a person? Is an important person in one
culture is also important in the other culture? We address these questions via
ranking of multilingual Wikipedia articles. With three ranking algorithms based
on network structure of Wikipedia, we assign ranking to all articles in 9
multilingual editions of Wikipedia and investigate general ranking structure of
PageRank, CheiRank and 2DRank. In particular, we focus on articles related to
persons, identify top 30 persons for each rank among different editions and
analyze distinctions of their distributions over activity fields such as
politics, art, science, religion, sport for each edition. We find that local
heroes are dominant but also global heroes exist and create an effective
network representing entanglement of cultures. The Google matrix analysis of
network of cultures shows signs of the Zipf law distribution. This approach
allows to examine diversity and shared characteristics of knowledge
organization between cultures. The developed computational, data driven
approach highlights cultural interconnections in a new perspective.Comment: Published in PLoS ONE
(http://www.plosone.org/article/info%3Adoi%2F10.1371%2Fjournal.pone.0074554).
Supporting information is available on the same webpag
Topological Properties of the Minimal Spanning Tree in Korean and American Stock Markets
We investigate a factor that can affect the number of links of a specific
stock in a network between stocks created by the minimal spanning tree (MST)
method, by using individual stock data listed on the S&P500 and KOSPI. Among
the common factors mentioned in the arbitrage pricing model (APM), widely
acknowledged in the financial field, a representative market index is
established as a possible factor. We found that the correlation distribution,
, of 400 stocks taken from the S&P500 index shows a very similar
with that of the Korean stock market and those deviate from the correlation
distribution of time series removed a nonlinearity by the surrogate method. We
also shows that the degree distribution of the MSTs for both stock markets
follows a power-law distribution with the exponent 2.1, while the
degree distribution of the time series eliminated a nonlinearity follows an
exponential distribution with the exponent, . Furthermore the
correlation, , between the degree k of individual stock, , and
the market index, , follows a power-law distribution, , with the exponent \gamma_{\textrm{S&P500}} \approx 0.16 and
, respectively. Thus, regardless of the
markets, the indivisual stocks closely related to the common factor in the
market, the market index, are likely to be located around the center of the
network between stocks, while those weakly related to the market index are
likely to be placed in the outside
Concurrent enhancement of percolation and synchronization in adaptive networks
Co-evolutionary adaptive mechanisms are not only ubiquitous in nature, but
also beneficial for the functioning of a variety of systems. We here consider
an adaptive network of oscillators with a stochastic, fitness-based, rule of
connectivity, and show that it self-organizes from fragmented and incoherent
states to connected and synchronized ones. The synchronization and percolation
are associated to abrupt transitions, and they are concurrently (and
significantly) enhanced as compared to the non-adaptive case. Finally we
provide evidence that only partial adaptation is sufficient to determine these
enhancements. Our study, therefore, indicates that inclusion of simple adaptive
mechanisms can efficiently describe some emergent features of networked
systems' collective behaviors, and suggests also self-organized ways to control
synchronization and percolation in natural and social systems.Comment: Published in Scientific Report
- …