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KneeTex: an ontology-driven system for information extraction from MRI reportsA machine learning approach to identify clinical trials involving nanodrugs and nanodevices from ClinicalTrials.govImproving biomedical information retrieval by linear combinations of different query expansion techniquesToward high-throughput phenotyping: unbiased automated feature extraction and selection from knowledge sourcesLarge scale biomedical texts classification: a kNN and an ESA-based approachesIdentifying Topics in Microblogs Using WikipediaClustering more than two million biomedical publications: comparing the accuracies of nine text-based similarity approachesDo parents recognize autistic deviant behavior long before diagnosis? Taking into account interaction using computational methods.Data integration of structured and unstructured sources for assigning clinical codes to patient staysApplying GIS and Machine Learning Methods to Twitter Data for Multiscale Surveillance of Influenza.SparkText: Biomedical Text Mining on Big Data Framework.A knowledge-driven approach to extract disease-related biomarkers from the literatureEnriching the international clinical nomenclature with Chinese daily used synonyms and concept recognition in physician notes.Disease causality extraction based on lexical semantics and document-clause frequency from biomedical literature.Mapping subsets of scholarly information.Effect of tuned parameters on an LSA multiple choice questions answering model.Gene prioritization for livestock diseases by data integration.Combining position weight matrices and document-term matrix for efficient extraction of associations of methylated genes and diseases from free textGOTA: GO term annotation of biomedical literature.Automated Detection of HONcode Website Conformity Compared to Manual Detection: An EvaluationLearning to Select Supplier Portfolios for Service Supply Chain.Lexical shifts, substantive changes, and continuity in State of the Union discourse, 1790-2014.How to Study the City on Instagram.Knowledge discovery in biology and biotechnology texts: a review of techniques, evaluation strategies, and applications.Visualization of Large-Scale Narrative Data Describing Human Error.A feature selection approach based on term distributions.Terminology challenges implementing the HL7 context-aware knowledge retrieval ('Infobutton') standardFinding falls in ambulatory care clinical documents using statistical text miningClassifying publications from the clinical and translational science award program along the translational research spectrum: a machine learning approachA Feature Selection Approach Based on Interclass and Intraclass Relative Contributions of Terms.Automated multidimensional phenotypic profiling using large public microarray repositoriesOntology-Driven Search and Triage: Design of a Web-Based Visual Interface for MEDLINE.Feature selection for ordinal text classification.Hierarchical link clustering algorithm in networks.A unified statistical approach to non-negative matrix factorization and probabilistic latent semantic indexing.An ecology of text: using text retrieval to study alife on the net.The integrated disease network.Discovering binary codes for documents by learning deep generative models.Natural Language Processing Based Instrument for Classification of Free Text Medical Records.In silico identification of oncogenic potential of fyn-related kinase in hepatocellular carcinoma.
P2860
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P2860
description
im Jahr 1988 veröffentlichter wissenschaftlicher Artikel
@de
wetenschappelijk artikel
@nl
наукова стаття, опублікована в січні 1988
@uk
name
Term-weighting approaches in automatic text retrieval
@en
Term-weighting approaches in automatic text retrieval
@nl
type
label
Term-weighting approaches in automatic text retrieval
@en
Term-weighting approaches in automatic text retrieval
@nl
prefLabel
Term-weighting approaches in automatic text retrieval
@en
Term-weighting approaches in automatic text retrieval
@nl
P1476
Term-weighting approaches in automatic text retrieval
@en
P2093
Christopher Buckley
P304
P356
10.1016/0306-4573(88)90021-0
P577
1988-01-01T00:00:00Z