Models for Narrative Information: A Study
- URL: http://arxiv.org/abs/2110.02084v1
- Date: Thu, 23 Sep 2021 09:32:28 GMT
- Title: Models for Narrative Information: A Study
- Authors: Udaya Varadarajan and Biswanath Dutta
- Abstract summary: The paper aims to analyze these models across various domains.
A systematic review methodology was adopted for an extensive literature selection.
Findings of this work demonstrate the similarities and differences among the elements of the ontology across domains.
- Score: 2.5585152083052574
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: The major objective of this work is to study and report the existing
ontology-driven models for narrative information. The paper aims to analyze
these models across various domains. The goal of this work is to bring the
relevant literature, and ontology models under one umbrella, and perform a
parametric comparative study. A systematic literature review methodology was
adopted for an extensive literature selection. A random stratified sampling
technique was used to select the models from the literature. The findings
explicate a comparative view of the narrative models across domains. The
differences and similarities of knowledge representation across domains, in
case of narrative information models based on ontology was identified. There
are significantly fewer studies that reviewed the ontology-based narrative
models. This work goes a step further by evaluating the ontologies using the
parameters from narrative components. This paper will explore the basic
concepts and top-level concepts in the models. Besides, this study provides a
comprehensive study of the narrative theories in the context of ongoing
research. The findings of this work demonstrate the similarities and
differences among the elements of the ontology across domains. It also
identifies the state of the art literature for ontology-based narrative
information.
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