1,416 research outputs found
The Governance of Migration-Related Diversity
The governance of migration-related diversity encompasses a broad range of topics, such as integration policies, anti-discrimination and anti-racism strategies, diversity policies, and various others. In this chapter we will limit ourselves to governance by government bodies (local, national, other) and focus explicitly on migration-related diversities (ethnic, cultural, religious, racial, other). We will discuss various theoretical models for the governance of migration-related diversity, but will also discuss empirical material on how and why governments choose very different perspectives and approaches, for instance either focusing on integration, or inclusion, or anti-discrimination, or not having an explicitly focused policy on migration-related diversities at all.</p
The cosmic-ray air-shower signal in Askaryan radio detectors
We discuss the radio emission from high-energy cosmic-ray induced air showers
hitting Earth's surface before the cascade has died out in the atmosphere. The
induced emission gives rise to a radio signal which should be detectable in the
currently operating Askaryan radio detectors built to search for the GZK
neutrino flux in ice. The in-air emission, the in-ice emission, as well as a
new component, the coherent transition radiation when the particle bunch
crosses the air-ice boundary, are included in the calculations
Academic Achievement among NCAA Division 2 Student-Athletes and Non-Athletes
There is a lack of published research on the evaluation of academic success among student-athletes in National Collegiate Athletic Association (NCAA) Division 2 (D2) institutions. Our study focused on comparing academic performance and career prospects between student-athletes and non-athletes (traditional students) at a D2 university. A survey measuring academic and career-related variables was administered to 170 participants, with 92 (54%) being student-athletes and 78 (46%) being non-athlete students. Our findings revealed no statistically significant differences between the two groups in terms of study hours, grade point average, and academic motivation. Moreover, there were no disparities in declared majors, expected graduation timelines, and career aspirations. The academic performance of student-athletes was found to be similar to that of their non-athlete counterparts. Most D2 student-athletes did not foresee pursuing professional sports careers, highlighting the importance of academic achievement in their overall career objectives
Forest age and plant species composition determine the soil fungal community composition in a Chinese subtropical forest
Non peer reviewedPublisher PD
Consensus, contradiction, and conciliation of interests: the geo-economics of the Energy Union. EPC Policy Brief, 8 July 2015
European Union energy policy calls for nothing less than a profound transformation of the EU's energy system: by
2050 decarbonised electricity generation with 80-95% fewer greenhouse gas emissions, increased use of
renewables, more energy efficiency, a functioning energy market and increased security of supply are to be
achieved. Different EU policies (e.g., EU climate and energy package for 2020) are intended to create the political
and regulatory framework for this transformation. The sectorial dynamics resulting from these EU policies already
affect the systems of electricity generation, transportation and storage in Europe, and the more effective the
implementation of new measures the more the structure of Europe's power system will change in the years to
come. Recent initiatives such as the 2030 climate/energy package and the Energy Union are supposed to keep this
dynamic up.
Setting new EU targets, however, is not necessarily the same as meeting them. The impact of EU energy policy is
likely to have considerable geo-economic implications for individual member states: with increasing market
integration come new competitors; coal and gas power plants face new renewable challengers domestically and
abroad; and diversification towards new suppliers will result in new trade routes, entry points and infrastructure.
Where these implications are at odds with powerful national interests, any member state may point to Article 194, 2
of the Lisbon Treaty and argue that the EU's energy policy agenda interferes with its given right to determine the
conditions for exploiting its energy resources, the choice between different energy sources and the general structure
of its energy supply.
The implementation of new policy initiatives therefore involves intense negotiations to conciliate contradicting
interests, something that traditionally has been far from easy to achieve. In areas where this process runs into
difficulties, the transfer of sovereignty to the European level is usually to be found amongst the suggested solutions.
Pooling sovereignty on a new level, however, does not automatically result in a consensus, i.e., conciliate
contradicting interests. Rather than focussing on the right level of decision making, European policy makers need to
face the (inconvenient truth of) geo-economical frictions within the Union that make it difficult to come to an
arrangement. The reminder of this text explains these latter, more structural and sector-related challenges for
European energy policy in more detail, and develops some concrete steps towards a political and regulatory
framework necessary to overcome them
Ice wedge polygon stability on steep slopes in West Greenland related to temperature and moisture dynamics of the active layer
Ice wedge polygons on steep slopes have generally been described as being covered by periglacial sediments and, typically, the active layer on slopes becomes mobile during thaw periods, which can lead to solifluction. In West Greenland close to the ice margin, however, the active layer and ice wedge polygons are stable despite their occurrence on steep slopes with inclinations of ≥30°. We conducted a soil survey (including sampling for soil analyses and radiocarbon dating) in the Umimmalissuaq valley and installed a field station ~4 km east of the current ice margin to monitor soil temperature and water tension at depths of 10, 20 and 35 cm of the active layer on a steep, north-facing slope in the middle of an ice wedge polygon from 2009 to 2015. Thawing and freezing periods lasted between 2 and 3 months and the active layer was usually completely frozen from November to April. We observed simultaneous and complete water saturation at all three depths of the active layer in one summer for 1 day. The amount of water in the active layer apparently was not enough to trigger solifluction during the summer thaw, even at slope inclinations above 30°. In addition, the dense shrub tundra absorbs most of the water during periods between thawing and freezing, which further stabilizes the slope. This process, together with the dry and continental climate caused by katabatic winds combined with no or limited frost heave, plays a crucial role in determining the stability of these slopes and can explain the presence of large-scale stable ice wedge polygon networks in organic matter-rich permafrost, which is about 5,000 years old. This study underlines the importance of soil hydrodynamics and local climate regime for landscape stability and differing intensities of solifluction processes in areas with strong geomorphological gradients and rising air temperatures
A Model for Circuit Execution Runtime And Its Implications for Quantum Kernels At Practical Data Set Sizes
Quantum machine learning (QML) is a fast-growing discipline within quantum
computing. One popular QML algorithm, quantum kernel estimation, uses quantum
circuits to estimate a similarity measure (kernel) between two classical
feature vectors. Given a set of such circuits, we give a heuristic, predictive
model for the total circuit execution time required, based on a
recently-introduced measure of the speed of quantum computers. In doing so, we
also introduce the notion of an "effective number of quantum volume layers of a
circuit", which may be of independent interest. We validate the performance of
this model using synthetic and real data by comparing the model's predictions
to empirical runtime data collected from IBM Quantum computers through the use
of the Qiskit Runtime service. At current speeds of today's quantum computers,
our model predicts data sets consisting of on the order of hundreds of feature
vectors can be processed in order a few hours. For a large-data workflow, our
model's predictions for runtime imply further improvements in the speed of
circuit execution -- as well as the algorithm itself -- are necessary.Comment: 8.5 pages of main text + 1.5 pages of appendices. 7 figures & 3
table
Predicting and Mapping of Soil Organic Carbon Using Machine Learning Algorithms in Northern Iran
Estimation of the soil organic carbon content is of utmost importance in
understanding the chemical, physical, and biological functions of the soil.
This study proposes machine learning algorithms of support vector machines,
artificial neural networks, regression tree, random forest, extreme gradient
boosting, and conventional deep neural network for advancing prediction models
of SOC. Models are trained with 1879 composite surface soil samples, and 105
auxiliary data as predictors. The genetic algorithm is used as a feature
selection approach to identify effective variables. The results indicate that
precipitation is the most important predictor driving 15 percent of SOC spatial
variability followed by the normalized difference vegetation index, day
temperature index of moderate resolution imaging spectroradiometer,
multiresolution valley bottom flatness and land use, respectively. Based on 10
fold cross validation, the DNN model reported as a superior algorithm with the
lowest prediction error and uncertainty. In terms of accuracy, DNN yielded a
mean absolute error of 59 percent, a root mean squared error of 75 percent, a
coefficient of determination of 0.65, and Lins concordance correlation
coefficient of 0.83. The SOC content was the highest in udic soil moisture
regime class with mean values of 4 percent, followed by the aquic and xeric
classes, respectively. Soils in dense forestlands had the highest SOC contents,
whereas soils of younger geological age and alluvial fans had lower SOC. The
proposed DNN is a promising algorithm for handling large numbers of auxiliary
data at a province scale, and due to its flexible structure and the ability to
extract more information from the auxiliary data surrounding the sampled
observations, it had high accuracy for the prediction of the SOC baseline map
and minimal uncertainty.Comment: 30pages, 9 figure
Interpretation of the cosmic-ray air shower signal in Askaryan radio detectors
We discuss the radio emission from a cosmic-ray air shower propagating in air before it hits an air-ice boundary after which it completes its propagation inside the ice. The in-air emission, the in-ice emission, as well as the transition radiation from the shower crossing the boundary is considered. We discuss the interpretation of the radio signal observed by an in-ice observer
Heeding Supply Chain Disruption Warnings:When And How Do Cross‐Functional Teams Ensure Firm Robustness?
Firms can adopt several strategies to increase their robustness to potential supply chain (SC) disruptions. One promising strategy is the use of a cross-functional team with representatives from functional departments. Such a team may facilitate sharing relevant information, enabling the firm to respond effectively to SC disruption warnings. However, despite their potential, cross-functional teams also differ in their ability to respond to SC disruption warnings and to ensure firm robustness. Extending insights from information-processing theory and team research to the field of SC management, we propose that a cross-functional team’s ability to handle high numbers of SC disruption warnings depends on the extent to which the team adopts centralized decision-making, with one or two members orchestrating the decision-making process. We also introduce internal integration problems as a mediating mechanism explaining why a cross-functional team lacking centralized decision-making may be unable to handle high numbers of SC disruption warnings. In two independent studies, we use multi-source data on cross-functional teams’ performance in dealing with SC disruption warnings during a realistic SC management simulation; the results support our predictions
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