sameAs
Exploiting HIV-1 protease and reverse transcriptase cross-resistance information for improved drug resistance prediction by means of multi-label classificationMultilabel classification for exploiting cross-resistance information in HIV-1 drug resistance predictionEfficient similarity search in protein structure databases by k-clique hashing.Fingerprint Kernels for Protein Structure Comparison.Clustering of gene expression data using a local shape-based similarity measure.GARLig: a fully automated tool for subset selection of large fragment spaces via a self-adaptive genetic algorithm.Multivariate modeling to identify patterns in clinical data: the example of chest pain.Chest pain in primary care: is the localization of pain diagnostically helpful in the critical evaluation of patients?--A cross sectional study.Physicochemical descriptors to discriminate protein-protein interactions in permanent and transient complexes selected by means of machine learning algorithms.Identification of Functionally Related Enzymes by Learning-to-Rank Methods.Extended Graph-Based Models for Enhanced Similarity Search in Cavbase.Response to van den Bruel and Perera: the comprehensive diagnostic study: a new solution to old problems?From the similarity analysis of protein cavities to the functional classification of protein families using cavbase.[Diagnosis in context - broadening the perspective].Protein sub-cellular localization prediction for special compartments via optimized time series distances.Extended graph-based models for enhanced similarity retrieval in Cavbase.SEGA: semiglobal graph alignment for structure-based protein comparison.Superposition and alignment of labeled point clouds.Evolutionary construction of multiple graph alignments for the structural analysis of biomolecules.The comprehensive diagnostic study is suggested as a design to model the diagnostic process.Merging chemical and biological space: Structural mapping of enzyme binding pocket space.In defense of fuzzy association analysis.Multiple graph alignment for the structural analysis of protein active sites.Estimating relative depth in single images via rankboostGrouping, Overlap, and Generalized Bientropic Functions for Fuzzy Modeling of Pairwise ComparisonsSpecial Issue on Discovery ScienceEditorial: Preference learning and rankingPreference-based reinforcement learning: a formal framework and a policy iteration algorithmPreference Learning and Ranking by Pairwise ComparisonOn predictive accuracy and risk minimization in pairwise label rankingLabel ranking by learning pairwise preferencesMultilabel classification via calibrated label rankingHierarchical Classification by Expected Utility MaximizationEditorialPredicting Partial Orders: Ranking with AbstentionSpecial Issue on Soft Computing for Information MiningGuest Editors’ introduction: special issue of the ECML/PKDD 2014 journal trackGuest editors’ introduction: special issue of the ECML/PKDD 2014 journal trackCorrelation-based embedding of pairwise score dataAn evolutionary approach to constraint-regularized learning
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P50
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deutscher Informatiker
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informáticu teóricu alemán
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