3,142 research outputs found
Exploring Regional Development of Digital Humanities Research: A Case Study for Taiwan
This study analyzed references and source papers of the Proceedings of
2009-2012 International Conference of Digital Archives and Digital Humanities
(DADH), which was held annually in Taiwan. A total of 59 sources and 1,104
references were investigated, based on descriptive analysis and subject
analysis of library practices on cataloguing. Preliminary results showed
historical materials, events, bureaucracies, and people of Taiwan and China in
the Qing Dynasty were the major subjects in the tempo-spatial dimensions. The
subject-date figure depicted a long-low head and short-high tail curve, which
demonstrated both characteristics of research of humanities and application of
technology in digital humanities. The dates of publication of the references
spanned over 360 years, which shows a long time span in research materials. A
majority of the papers (61.41%) were single-authored, which is in line with the
common research practice in the humanities. Books published by general
publishers were the major type of references, and this was the same as that of
established humanities research. The next step of this study will focus on the
comparison of characteristics of both sources and references of international
journals with those reported in this article.Comment: 25 pages, 10 tables, 5 figure
A thermal quench induces spatial inhomogeneities in a holographic superconductor
Holographic duality is a powerful tool to investigate the far-from
equilibrium dynamics of superfluids and other phases of quantum matter. For
technical reasons it is usually assumed that, after a quench, the far-from
equilibrium fields are still spatially uniform. Here we relax this assumption
and study the time evolution of a holographic superconductor after a
temperature quench but allowing spatial variations of the order parameter. Even
though the initial state and the quench are spatially uniform we show the order
parameter develops spatial oscillations with an amplitude that increases with
time until it reaches a stationary value. The free energy of these
inhomogeneous solutions is lower than that of the homogeneous ones. Therefore
the former corresponds to the physical configuration that could be observed
experimentally.Comment: corrected typos, added references and new results for a different
quenc
Split degenerate states and stable p+ip phases from holography
In this paper, we investigate the p+p superfluid phases in the complex
vector field holographic p-wave model. We find that in the probe limit, the
p+p phase and the p-wave phase are equally stable, hence the p and p
orders can be mixed with an arbitrary ratio to form more general p+p
phases, which are also equally stable with the p-wave and p+p phases. As a
result, the system possesses a degenerate thermal state in the superfluid
region. We further study the case with considering the back reaction on the
metric, and find that the degenerate ground states will be separated into
p-wave and p+p phases, and the p-wave phase is more stable. Finally, due to
the different critical temperature of the zeroth order phase transitions from
p-wave and p+p phases to the normal phase, there is a temperature region
where the p+p phase exists but the p-wave phase doesn't. In this region we
find the stable p+p phase for the first time.Comment: 16 pages, 5 figures; typos correcte
Two-Stage Bagging Pruning for Reducing the Ensemble Size and Improving the Classification Performance
Ensemble methods, such as the traditional bagging algorithm, can usually improve the performance of a single classifier. However, they usually require large storage space as well as relatively time-consuming predictions. Many approaches were developed to reduce the ensemble size and improve the classification performance by pruning the traditional bagging algorithms. In this article, we proposed a two-stage strategy to prune the traditional bagging algorithm by combining two simple approaches: accuracy-based pruning (AP) and distance-based pruning (DP). These two methods, as well as their two combinations, “AP+DP” and “DP+AP” as the two-stage pruning strategy, were all examined. Comparing with the single pruning methods, we found that the two-stage pruning methods can furthermore reduce the ensemble size and improve the classification. “AP+DP” method generally performs better than the “DP+AP” method when using four base classifiers: decision tree, Gaussian naive Bayes, K-nearest neighbor, and logistic regression. Moreover, as compared to the traditional bagging, the two-stage method “AP+DP” improved the classification accuracy by 0.88%, 4.06%, 1.26%, and 0.96%, respectively, averaged over 28 datasets under the four base classifiers. It was also observed that “AP+DP” outperformed other three existing algorithms Brag, Nice, and TB assessed on 8 common datasets. In summary, the proposed two-stage pruning methods are simple and promising approaches, which can both reduce the ensemble size and improve the classification accuracy
- …