A Diversity-Aware Domain Development Methodology
- URL: http://arxiv.org/abs/2208.13064v1
- Date: Sat, 27 Aug 2022 17:58:47 GMT
- Title: A Diversity-Aware Domain Development Methodology
- Authors: Mayukh Bagchi
- Abstract summary: The paper grounds aforementioned shortcomings in representation diversity and proposes a three-fold solution.
It includes (i) a foundational pipeline for rendering concepts reuse-ready, (ii) a first characterization of a minimalistic knowledge model named teleology, and (iii) a flexible, reuse-native methodology for diversity-aware domain development exploiting solutions.
- Score: 0.0
- License: http://creativecommons.org/licenses/by-nc-nd/4.0/
- Abstract: The development of domain ontological models, though being a mature research
arena backed by well-established methodologies, still suffer from two key
shortcomings. Firstly, the issues concerning the semantic persistency of
ontology concepts and their flexible reuse in domain development employing
existing approaches. Secondly, due to the difficulty in understanding and
reusing top-level concepts in existing foundational ontologies, the obfuscation
regarding the semantic nature of domain representations. The paper grounds the
aforementioned shortcomings in representation diversity and proposes a
three-fold solution - (i) a pipeline for rendering concepts reuse-ready, (ii) a
first characterization of a minimalistic foundational knowledge model, named
foundational teleology, semantically explicating foundational distinctions
enforcing the static as well as dynamic nature of domain representations, and
(iii) a flexible, reuse-native methodology for diversity-aware domain
development exploiting solutions (i) and (ii). The preliminary work reported
validates the potentiality of the solution components.
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