about
Computational annotation of UTR cis-regulatory modules through Frequent Pattern Mining.A novel biclustering algorithm for the discovery of meaningful biological correlations between microRNAs and their target genesCollective regression for handling autocorrelation of network data in a transductive settingRelational mining for discovering changes in evolving networksCollective Inference for Handling Autocorrelation in Network RegressionMining Dense Regions from Vehicular Mobility in Streaming SettingDiscovering Evolution Chains in Dynamic NetworksDocument Image Understanding through Iterative Transductive LearningAn Unsupervised Framework for Topological Relations Extraction from Geographic DocumentsToward Geographic Information Harvesting: Extraction of Spatial Relational Facts from Web DocumentsA Temporal Data Mining Framework for Analyzing Longitudinal DataDiscovering process models through relational disjunctive patterns miningMBlab: Molecular Biodiversity LaboratoryMining Spatial Association Rules for Composite Motif DiscoveryProject D.A.M.A.: Document Acquisition, Management and ArchivingTransductive Learning of Logical Structures from Document ImagesA Relational Approach for Discovering Frequent Patterns with DisjunctionsComplex objects rankingA Knowledge-Based Framework for Information Extraction from Clinical Practice GuidelinesA Temporal Data Mining Approach for Discovering Knowledge on the Changes of the Patient’s PhysiologyMining Multiple Level Non-redundant Association Rules through Two-Fold Pruning of RedundanciesNovelty Detection from Evolving Complex Data Streams with Time WindowsRelational Frequent Patterns Mining for Novelty Detection from Data StreamsDiscovering Explanations from Longitudinal DataDiscovering Triggering Events from Longitudinal Data
P50
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P50
description
onderzoeker
@nl
researcher ORCID ID = 0000-0001-5790-8368
@en
name
Corrado Loglisci
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Corrado Loglisci
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Corrado Loglisci
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Corrado Loglisci
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type
label
Corrado Loglisci
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Corrado Loglisci
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Corrado Loglisci
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Corrado Loglisci
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prefLabel
Corrado Loglisci
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Corrado Loglisci
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Corrado Loglisci
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Corrado Loglisci
@nl
P106
P1153
8883315400
P2456
P31
P496
0000-0001-5790-8368