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Legal Detection of AI Products Based on Formal Argumentation and Legal Ontology

2022-09-07 11:08:08
Zhe Yu, Yiwei Lu

Abstract

Ontology is a popular method for knowledge representation in different domains, including the legal domain, and description logics (DL) is commonly used as its description language. To handle reasoning based on inconsistent DL-based legal ontologies, the current paper presents a structured argumentation framework particularly for reasoning in legal contexts on the basis of ASPIC+, and translates the legal ontology into formulas and rules of an argumentation theory. With a particular focus on the design of autonomous vehicles from the perspective of legal AI, we show that using this combined theory of formal argumentation and DL-based legal ontology, acceptable assertions can be obtained based on inconsistent ontologies, and the traditional reasoning tasks of DL ontologies can also be accomplished. In addition, a formal definition of explanations for the result of reasoning is presented.

Abstract (translated)

URL

https://arxiv.org/abs/2209.03070

PDF

https://arxiv.org/pdf/2209.03070.pdf


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