An epistemic logic for modeling decisions in the context of incomplete knowledge
Substantial efforts have been made in developing various Decision Modeling formalisms, both from industry and academia. A challenging problem is that of expressing decision knowledge in the context of incomplete knowledge. In such contexts, decisions depend on what is known or not known. We argue th...
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Zusammenfassung: | Substantial efforts have been made in developing various Decision Modeling
formalisms, both from industry and academia. A challenging problem is that of
expressing decision knowledge in the context of incomplete knowledge. In such
contexts, decisions depend on what is known or not known. We argue that none of
the existing formalisms for modeling decisions are capable of correctly
capturing the epistemic nature of such decisions, inevitably causing issues in
situations of uncertainty. This paper presents a new language for modeling
decisions with incomplete knowledge. It combines three principles:
stratification, autoepistemic logic, and definitions. A knowledge base in this
language is a hierarchy of epistemic theories, where each component theory may
epistemically reason on the knowledge in lower theories, and decisions are made
using definitions with epistemic conditions. |
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DOI: | 10.48550/arxiv.2312.11186 |