2,909 research outputs found
Contemplating Procession: Thomas Aquinas’ Analogy of the Procession of the Word in the Immanent Divine Life
Thomas Aquinas’ Trinitarian theology has been criticized as proposing an abstract notion of God that is divorced from salvation history and that is supported by tedious and ultimately incomprehensible explication. By showing the goals and limitations of Thomas’ approach and by analyzing one element of his theology, it will be shown that these criticisms are unfounded. Specifically, this article will attempt to analyze Aquinas’ view of the procession of the Word, or act of “generation,” in the divine immanent life. It can be seen that Aquinas actually provides a metaphysical analogy for contemplating generation that avoids heresy and that absolutely integrates the economic and immanent lives of the Trinity
A review of the literature on citation impact indicators
Citation impact indicators nowadays play an important role in research
evaluation, and consequently these indicators have received a lot of attention
in the bibliometric and scientometric literature. This paper provides an
in-depth review of the literature on citation impact indicators. First, an
overview is given of the literature on bibliographic databases that can be used
to calculate citation impact indicators (Web of Science, Scopus, and Google
Scholar). Next, selected topics in the literature on citation impact indicators
are reviewed in detail. The first topic is the selection of publications and
citations to be included in the calculation of citation impact indicators. The
second topic is the normalization of citation impact indicators, in particular
normalization for field differences. Counting methods for dealing with
co-authored publications are the third topic, and citation impact indicators
for journals are the last topic. The paper concludes by offering some
recommendations for future research
F1000 recommendations as a new data source for research evaluation: A comparison with citations
F1000 is a post-publication peer review service for biological and medical
research. F1000 aims to recommend important publications in the biomedical
literature, and from this perspective F1000 could be an interesting tool for
research evaluation. By linking the complete database of F1000 recommendations
to the Web of Science bibliographic database, we are able to make a
comprehensive comparison between F1000 recommendations and citations. We find
that about 2% of the publications in the biomedical literature receive at least
one F1000 recommendation. Recommended publications on average receive 1.30
recommendations, and over 90% of the recommendations are given within half a
year after a publication has appeared. There turns out to be a clear
correlation between F1000 recommendations and citations. However, the
correlation is relatively weak, at least weaker than the correlation between
journal impact and citations. More research is needed to identify the main
reasons for differences between recommendations and citations in assessing the
impact of publications
Large-Scale Analysis of the Accuracy of the Journal Classification Systems of Web of Science and Scopus
Journal classification systems play an important role in bibliometric
analyses. The two most important bibliographic databases, Web of Science and
Scopus, each provide a journal classification system. However, no study has
systematically investigated the accuracy of these classification systems. To
examine and compare the accuracy of journal classification systems, we define
two criteria on the basis of direct citation relations between journals and
categories. We use Criterion I to select journals that have weak connections
with their assigned categories, and we use Criterion II to identify journals
that are not assigned to categories with which they have strong connections. If
a journal satisfies either of the two criteria, we conclude that its assignment
to categories may be questionable. Accordingly, we identify all journals with
questionable classifications in Web of Science and Scopus. Furthermore, we
perform a more in-depth analysis for the field of Library and Information
Science to assess whether our proposed criteria are appropriate and whether
they yield meaningful results. It turns out that according to our
citation-based criteria Web of Science performs significantly better than
Scopus in terms of the accuracy of its journal classification system
Systematic analysis of agreement between metrics and peer review in the UK REF
When performing a national research assessment, some countries rely on
citation metrics whereas others, such as the UK, primarily use peer review. In
the influential Metric Tide report, a low agreement between metrics and peer
review in the UK Research Excellence Framework (REF) was found. However,
earlier studies observed much higher agreement between metrics and peer review
in the REF and argued in favour of using metrics. This shows that there is
considerable ambiguity in the discussion on agreement between metrics and peer
review. We provide clarity in this discussion by considering four important
points: (1) the level of aggregation of the analysis; (2) the use of either a
size-dependent or a size-independent perspective; (3) the suitability of
different measures of agreement; and (4) the uncertainty in peer review. In the
context of the REF, we argue that agreement between metrics and peer review
should be assessed at the institutional level rather than at the publication
level. Both a size-dependent and a size-independent perspective are relevant in
the REF. The interpretation of correlations may be problematic and as an
alternative we therefore use measures of agreement that are based on the
absolute or relative differences between metrics and peer review. To get an
idea of the uncertainty in peer review, we rely on a model to bootstrap peer
review outcomes. We conclude that particularly in Physics, Clinical Medicine,
and Public Health, metrics agree quite well with peer review and may offer an
alternative to peer review
Do altmetrics correlate with citations? Extensive comparison of altmetric indicators with citations from a multidisciplinary perspective
An extensive analysis of the presence of different altmetric indicators
provided by Altmetric.com across scientific fields is presented, particularly
focusing on their relationship with citations. Our results confirm that the
presence and density of social media altmetric counts are still very low and
not very frequent among scientific publications, with 15%-24% of the
publications presenting some altmetric activity and concentrating in the most
recent publications, although their presence is increasing over time.
Publications from the social sciences, humanities and the medical and life
sciences show the highest presence of altmetrics, indicating their potential
value and interest for these fields. The analysis of the relationships between
altmetrics and citations confirms previous claims of positive correlations but
relatively weak, thus supporting the idea that altmetrics do not reflect the
same concept of impact as citations. Also, altmetric counts do not always
present a better filtering of highly cited publications than journal citation
scores. Altmetrics scores (particularly mentions in blogs) are able to identify
highly cited publications with higher levels of precision than journal citation
scores (JCS), but they have a lower level of recall. The value of altmetrics as
a complementary tool of citation analysis is highlighted, although more
research is suggested to disentangle the potential meaning and value of
altmetric indicators for research evaluation
CitNetExplorer: A new software tool for analyzing and visualizing citation networks
We present CitNetExplorer, a new software tool for analyzing and visualizing
citation networks of scientific publications. CitNetExplorer can for instance
be used to study the development of a research field, to delineate the
literature on a research topic, and to support literature reviewing. We first
introduce the main concepts that need to be understood when working with
CitNetExplorer. We then demonstrate CitNetExplorer by using the tool to analyze
the scientometric literature and the literature on community detection in
networks. Finally, we discuss some technical details on the construction,
visualization, and analysis of citation networks in CitNetExplorer
A Theoretical Analysis of Cooperative Behavior in Multi-Agent Q-learning
A number of experimental studies have investigated whether cooperative behavior may emerge in multi-agent Q-learning. In some studies cooperative behavior did emerge, in others it did not. This report provides a theoretical analysis of this issue. The analysis focuses on multi-agent Q-learning in iterated prisoner’s dilemmas. It is shown that under certain assumptions cooperative behavior may emerge when multi-agent Q-learning is applied in an iterated prisoner’s dilemma. An important consequence of the analysis is that multi-agent Q-learning may result in non-Nash behavior. It is found experimentally that the theoretical results derived in this report are quite robust to violations of the underlying assumptions.Cooperation;Multi-Agent Q-Learning;Multi-Agent Reinforcement Learning;Nash Equilibrium;Prisoner’s Dilemma
Field-normalized citation impact indicators and the choice of an appropriate counting method
Bibliometric studies often rely on field-normalized citation impact
indicators in order to make comparisons between scientific fields. We discuss
the connection between field normalization and the choice of a counting method
for handling publications with multiple co-authors. Our focus is on the choice
between full counting and fractional counting. Based on an extensive
theoretical and empirical analysis, we argue that properly field-normalized
results cannot be obtained when full counting is used. Fractional counting does
provide results that are properly field normalized. We therefore recommend the
use of fractional counting in bibliometric studies that require field
normalization, especially in studies at the level of countries and research
organizations. We also compare different variants of fractional counting. In
general, it seems best to use either the author-level or the address-level
variant of fractional counting
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