The OwlExporter: Flexible Ontology Population from Text
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Overview Ontology Population Background Example: Ontology Population using ANNIE Exporting Domain Individuals Exporting Domain Datatype Relationships Exporting Domain Object Property Relationships Exporting NLP Instances Exporting NLP Datatype Property Relationships Exporting NLP Object Property Relationships Exporting Domain/NLP Relationships Exporting Coreferences Installation Downloads Feedback Version history
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