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Static Knowledge vs. Dynamic Argumentation: A Dual Theory Based on Kripke Semantics

2022-09-27 00:16:05
Xinyu Wang, Momoka Fujieda

Abstract

This paper establishes a dual theory about knowledge and argumentation. Our idea is rooted at both epistemic logic and argumentation theory, and we aim to merge these two fields, not just in a superficial way but to thoroughly disclose the intrinsic relevance between knowledge and argumentation. Specifically, we define epistemic Kripke models and argument Kripke models as a dual pair, and then work out a two-way generation method between these two types of Kripke models. Such generation is rigorously justified by a duality theorem on modal formulae's invariance. We also provide realistic examples to demonstrate our generation, through which our framework's practical utility gets strongly advocated. We finally propose a philosophical thesis that knowledge is essentially dynamic, and we draw certain connection to Maxwell's demon as well as the well-known proverb "knowledge is power".

Abstract (translated)

URL

https://arxiv.org/abs/2209.13082

PDF

https://arxiv.org/pdf/2209.13082.pdf


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