Clustering more than two million biomedical publications: comparing the accuracies of nine text-based similarity approaches
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Biotea: RDFizing PubMed Central in support for the paper as an interface to the Web of DataPassage-Based Bibliographic Coupling: An Inter-Article Similarity Measure for Biomedical ArticlesClustering cliques for graph-based summarization of the biomedical research literatureUsing cited references to improve the retrieval of related biomedical documentsDesign and update of a classification system: the UCSD map of scienceNew Issues for New Methods: Ethical and Editorial Challenges for an Experimental Philosophy.Accessing biomedical literature in the current information landscape.Prediction of black box warning by mining patterns of Convergent Focus Shift in clinical trial study populations using linked public dataCitation-based clustering of publications using CitNetExplorer and VOSviewerSystematic review automation technologies.Characterization of the peer review network at the Center for Scientific Review, National Institutes of Health.Training text chunkers on a silver standard corpus: can silver replace gold?Visualizing the topical structure of the medical sciences: a self-organizing map approach.Full text clustering and relationship network analysis of biomedical publications.Do Nobel Laureates Create Prize-Winning Networks? An Analysis of Collaborative Research in Physiology or MedicineClustering Scientific Publications Based on Citation Relations: A Systematic Comparison of Different MethodsUsing ontology-based annotation to profile disease researchFinding Related Publications: Extending the Set of Terms Used to Assess Article Similarity.Two Similarity Metrics for Medical Subject Headings (MeSH): An Aid to Biomedical Text Mining and Author Name Disambiguation.Multivariate hypergeometric similarity measure.Piloting an approach to rapid and automated assessment of a new research initiative: Application to the National Cancer Institute's Provocative Questions initiative.Generating clustered journal maps: an automated system for hierarchical classification.Aggregator: a machine learning approach to identifying MEDLINE articles that derive from the same underlying clinical trial.Hybrid self-optimized clustering model based on citation links and textual features to detect research topics.Using text analysis to quantify the similarity and evolution of scientific disciplines.Divergent discourse between protests and counter-protests: #BlackLivesMatter and #AllLivesMatter.Science map metaphors: a comparison of network versus hexmap-based visualizations.The Closer the Better: Similarity of Publication Pairs at Different Cocitation LevelsWhich Type of Citation Analysis Generates the Most Accurate Taxonomy of Scientific and Technical Knowledge?Creation of a highly detailed, dynamic, global model and map of scienceImproving the accuracy of co-citation clustering using full textVisualization and analysis of SCImago Journal & Country Rank structure via journal clustering
P2860
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P2860
Clustering more than two million biomedical publications: comparing the accuracies of nine text-based similarity approaches
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2011 nî lūn-bûn
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2011 թուականի Մարտին հրատարակուած գիտական յօդուած
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2011 թվականի մարտին հրատարակված գիտական հոդված
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2011年の論文
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2011年論文
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2011年論文
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2011年論文
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2011年論文
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2011年論文
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Clustering more than two milli ...... xt-based similarity approaches
@ast
Clustering more than two milli ...... xt-based similarity approaches
@en
Clustering more than two milli ...... xt-based similarity approaches
@nl
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label
Clustering more than two milli ...... xt-based similarity approaches
@ast
Clustering more than two milli ...... xt-based similarity approaches
@en
Clustering more than two milli ...... xt-based similarity approaches
@nl
prefLabel
Clustering more than two milli ...... xt-based similarity approaches
@ast
Clustering more than two milli ...... xt-based similarity approaches
@en
Clustering more than two milli ...... xt-based similarity approaches
@nl
P2093
P2860
P50
P3181
P1433
P1476
Clustering more than two milli ...... xt-based similarity approaches
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P2093
David Newman
Joseph R Biberstine
Michael Patek
Richard Klavans
Russell J Duhon
P2860
P304
P3181
P356
10.1371/JOURNAL.PONE.0018029
P407
P577
2011-03-17T00:00:00Z