Automatic story generation systems require a collection of commonsense knowledge to generate stories that contain logical and coherent sequences of events appropriate for their intended audience. But manually building and populating a semantic ontology that contains relevant assertions is a tedious task. Crowdsourcing can be used as an approach to quickly amass a large collection of commonsense concepts but requires validation of the quality of the knowledge that has been contributed by the public. Another approach is through relation extraction. This paper discusses the use of GATE and custom extraction rules to automatically extract binary conceptual relations from children’s stories. Evaluation results show that the extractor achieved a ...
Abstract. Most work on ontology learning from text relies on un-supervised methods for relation extr...
Automatic information extraction (IE) enables the construction of very large knowledge bases (KBs), ...
Most work on ontology learning from text relies on unsupervised methods for relation extraction insp...
People use storytelling as a natural and familiar means of conveying information and experience to e...
Humans interact with each other using their collection of commonsense knowledge about everyday conce...
Ambiguity, complexity, and diversity in natural language textual expressions are major hindrances to...
Ontology may be a conceptualization of a website into a human understandable, however machinereadabl...
This paper presents our work in developing a commonsense knowledge source based on semantic concepts...
Story generation systems rely heavily on their knowledge base in order to come up with stories. Most...
Semantic relations between concepts or entities exist in textual documents, keywords or key phrases,...
This paper describes a crowdsourcing experiment on the annotation of plot-like structures in En- gli...
Thesis (Ph.D.)--University of Washington, 2012The ability to automatically convert natural language ...
Story Sense is a web-based learning environment that acquires common sense knowledge from children b...
Abstract. Web-scale relation extraction is a means for building and extending large repositories of ...
Automatic information extraction (IE) enables the construction of very large knowledge bases (KBs), ...
Abstract. Most work on ontology learning from text relies on un-supervised methods for relation extr...
Automatic information extraction (IE) enables the construction of very large knowledge bases (KBs), ...
Most work on ontology learning from text relies on unsupervised methods for relation extraction insp...
People use storytelling as a natural and familiar means of conveying information and experience to e...
Humans interact with each other using their collection of commonsense knowledge about everyday conce...
Ambiguity, complexity, and diversity in natural language textual expressions are major hindrances to...
Ontology may be a conceptualization of a website into a human understandable, however machinereadabl...
This paper presents our work in developing a commonsense knowledge source based on semantic concepts...
Story generation systems rely heavily on their knowledge base in order to come up with stories. Most...
Semantic relations between concepts or entities exist in textual documents, keywords or key phrases,...
This paper describes a crowdsourcing experiment on the annotation of plot-like structures in En- gli...
Thesis (Ph.D.)--University of Washington, 2012The ability to automatically convert natural language ...
Story Sense is a web-based learning environment that acquires common sense knowledge from children b...
Abstract. Web-scale relation extraction is a means for building and extending large repositories of ...
Automatic information extraction (IE) enables the construction of very large knowledge bases (KBs), ...
Abstract. Most work on ontology learning from text relies on un-supervised methods for relation extr...
Automatic information extraction (IE) enables the construction of very large knowledge bases (KBs), ...
Most work on ontology learning from text relies on unsupervised methods for relation extraction insp...