16 research outputs found

    A citation-based map of concepts in invasion biology

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    Invasion biology has been quickly expanding in the last decades so that it is now metaphorically flooded with publications, concepts, and hypotheses. Among experts, there is no clear consensus about the relationships between invasion concepts, and almost no one seems to have a good overview of the literature anymore. Similar observations can be made for other research fields. Science needs new navigation tools so that researchers within and outside of a research field as well as science journalists, students, teachers, practitioners, policy-makers, and others interested in the field can more easily understand its key ideas. Such navigation tools could, for example, be maps of the major concepts and hypotheses of a research field. Applying a bibliometric method, we created such maps for invasion biology. We analysed research papers of the last two decades citing at least two of 35 common invasion hypotheses. Co-citation analysis yields four distinct clusters of hypotheses. These clusters can describe the main directions in invasion biology and explain basic driving forces behind biological invasions. The method we outline here for invasion biology can be easily applied for other research fields

    Semantics-based clustering approach for similar research area detection

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    The manual process of searching out individuals in an already existing research field is cumbersome and time-consuming. Prominent and rookie researchers alike are predisposed to seek existing research publications in a research field of interest before coming up with a thesis. From extant literature, automated similar research area detection systems have been developed to solve this problem. However, most of them use keyword-matching techniques, which do not sufficiently capture the implicit semantics of keywords thereby leaving out some research articles. In this study, we propose the use of Ontology-based pre-processing, Latent Semantic Indexing and K-Means Clustering to develop a prototype similar research area detection system, that can be used to determine similar research domain publications. Our proposed system solves the challenge of high dimensionality and data sparsity faced by the traditional document clustering technique. Our system is evaluated with randomly selected publications from faculties in Nigerian universities and results show that the integration of ontologies in preprocessing provides more accurate clustering results

    Using ontologies to map between research data and policymakers’ presumptions: the experience of the KNOWMAK project

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    Understanding knowledge co-creation in key emerging areas of European research is critical for policy makers wishing to analyze impact and make strategic decisions. However, purely data-driven methods for characterising policy topics have limitations relating to the broad nature of such topics and the differences in language and topic structure between the political language and scientific and technological outputs. In this paper, we discuss the use of ontologies and semantic technologies as a means to bridge the linguistic and conceptual gap between policy questions and data sources for characterising European knowledge production. Our experience suggests that the integration between advanced techniques for language processing and expert assessment at critical junctures in the process is key for the success of this endeavour

    Does deep learning help topic extraction? A kernel k-means clustering method with word embedding

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    © 2018 All rights reserved. Topic extraction presents challenges for the bibliometric community, and its performance still depends on human intervention and its practical areas. This paper proposes a novel kernel k-means clustering method incorporated with a word embedding model to create a solution that effectively extracts topics from bibliometric data. The experimental results of a comparison of this method with four clustering baselines (i.e., k-means, fuzzy c-means, principal component analysis, and topic models) on two bibliometric datasets demonstrate its effectiveness across either a relatively broad range of disciplines or a given domain. An empirical study on bibliometric topic extraction from articles published by three top-tier bibliometric journals between 2000 and 2017, supported by expert knowledge-based evaluations, provides supplemental evidence of the method's ability on topic extraction. Additionally, this empirical analysis reveals insights into both overlapping and diverse research interests among the three journals that would benefit journal publishers, editorial boards, and research communities

    Map of scientific research on Communication in Spain: study fronts and rankings of authors, publications and institutions

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    This work presents a current map of scientific research on Communication in Spain, identifying both the research fronts of the publications with the greatest impact over the last three years (2019–2021) and the authors who led such work and their universities of reference. The original methodology applied herein focuses on an analysis of the cited authors. After a careful selection process, we work with a corpus of more than 800 articles, using Scopus and the VOSviewer software to generate a co-referencing map and throw light on the structure of the Communication field. On the basis of that analysis, we identify nine thematic clusters, with a particular grouping structure, leading authors, and relationships around fields of study such as communication, democracy and power, audiences and media consumption, the media industry, journalistic practice, fact checking and disinformation, journalistic innovation, and SEO journalism. The ranking of cited authors, where Ramón Salaverría and Rasmus K. Nielsen hold equal first position and the Chilean Claudia Mellado is the only woman at the head of a strong group, is put into context by analyzing their scientific production and the normalized impact in Communication of their institutions. The comparative analysis reveals the elite Spanish authors in Communication (Xosé López-García, Ignacio Aguaded, Andreu Casero-Ripollés, Lluís Codina, and Ramón Salaverría) and shows how universities in Madrid maintain their importance in terms of production but that those in Catalunya have the lead in terms of impact. The research is completed with a map of keyword co-occurrence that confirms the barrage of studies around the Covid crisis and the parallel and growing number of hoaxes (fakes). The research confirms the relevance of and opportunity to apply scientometric techniques to the Communication field

    Semantics-based clustering approach for similar research area detection

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    The manual process of searching out individuals in an already existing research field is cumbersome and time-consuming. Prominent and rookie researchers alike are predisposed to seek existing research publications in a research field of interest before coming up with a thesis. From extant literature, automated similar research area detection systems have been developed to solve this problem. However, most of them use keyword-matching techniques, which do not sufficiently capture the implicit semantics of keywords thereby leaving out some research articles. In this study, we propose the use of ontology-based pre-processing, Latent Semantic Indexing and K-Means Clustering to develop a prototype similar research area detection system, that can be used to determine similar research domain publications. Our proposed system solves the challenge of high dimensionality and data sparsity faced by the traditional document clustering technique. Our system is evaluated with randomly selected publications from faculties in Nigerian universities and results show that the integration of ontologies in preprocessing provides more accurate clustering results
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