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Hlavní autoři: Zhang, Bohui, Carriero, Valentina Anita, Schreiberhuber, Katrin, Tsaneva, Stefani, González, Lucía Sánchez, Kim, Jongmo, de Berardinis, Jacopo
Médium: Preprint
Vydáno: 2024
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On-line přístup:https://arxiv.org/abs/2403.05921
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author Zhang, Bohui
Carriero, Valentina Anita
Schreiberhuber, Katrin
Tsaneva, Stefani
González, Lucía Sánchez
Kim, Jongmo
de Berardinis, Jacopo
author_facet Zhang, Bohui
Carriero, Valentina Anita
Schreiberhuber, Katrin
Tsaneva, Stefani
González, Lucía Sánchez
Kim, Jongmo
de Berardinis, Jacopo
contents Ontology engineering (OE) in large projects poses a number of challenges arising from the heterogeneous backgrounds of the various stakeholders, domain experts, and their complex interactions with ontology designers. This multi-party interaction often creates systematic ambiguities and biases from the elicitation of ontology requirements, which directly affect the design, evaluation and may jeopardise the target reuse. Meanwhile, current OE methodologies strongly rely on manual activities (e.g., interviews, discussion pages). After collecting evidence on the most crucial OE activities, we introduce \textbf{OntoChat}, a framework for conversational ontology engineering that supports requirement elicitation, analysis, and testing. By interacting with a conversational agent, users can steer the creation of user stories and the extraction of competency questions, while receiving computational support to analyse the overall requirements and test early versions of the resulting ontologies. We evaluate OntoChat by replicating the engineering of the Music Meta Ontology, and collecting preliminary metrics on the effectiveness of each component from users. We release all code at https://github.com/King-s-Knowledge-Graph-Lab/OntoChat.
format Preprint
id arxiv_https___arxiv_org_abs_2403_05921
institution arXiv
publishDate 2024
record_format arxiv
spellingShingle OntoChat: a Framework for Conversational Ontology Engineering using Language Models
Zhang, Bohui
Carriero, Valentina Anita
Schreiberhuber, Katrin
Tsaneva, Stefani
González, Lucía Sánchez
Kim, Jongmo
de Berardinis, Jacopo
Artificial Intelligence
Ontology engineering (OE) in large projects poses a number of challenges arising from the heterogeneous backgrounds of the various stakeholders, domain experts, and their complex interactions with ontology designers. This multi-party interaction often creates systematic ambiguities and biases from the elicitation of ontology requirements, which directly affect the design, evaluation and may jeopardise the target reuse. Meanwhile, current OE methodologies strongly rely on manual activities (e.g., interviews, discussion pages). After collecting evidence on the most crucial OE activities, we introduce \textbf{OntoChat}, a framework for conversational ontology engineering that supports requirement elicitation, analysis, and testing. By interacting with a conversational agent, users can steer the creation of user stories and the extraction of competency questions, while receiving computational support to analyse the overall requirements and test early versions of the resulting ontologies. We evaluate OntoChat by replicating the engineering of the Music Meta Ontology, and collecting preliminary metrics on the effectiveness of each component from users. We release all code at https://github.com/King-s-Knowledge-Graph-Lab/OntoChat.
title OntoChat: a Framework for Conversational Ontology Engineering using Language Models
topic Artificial Intelligence
url https://arxiv.org/abs/2403.05921