Uncertain and Approximative Knowledge Representation to Reasoning on Classification with a Fuzzy Networks Based System
Mohamed Nazih Omri

TL;DR
This paper presents a fuzzy object-based knowledge representation system that enables reasoning on classification tasks with uncertain and imprecise information, facilitating user interaction and decision support in technical systems.
Contribution
It introduces a novel fuzzy semantic network architecture combining necessary, possible, and user classes for improved uncertain knowledge reasoning.
Findings
Effective reasoning on fuzzy classification achieved
Supports integration of user objects into knowledge base
Enhances online user assistance with natural language queries
Abstract
The approach described here allows to use the fuzzy Object Based Representation of imprecise and uncertain knowledge. This representation has a great practical interest due to the possibility to realize reasoning on classification with a fuzzy semantic network based system. For instance, the distinction between necessary, possible and user classes allows to take into account exceptions that may appear on fuzzy knowledge-base and facilitates integration of user's Objects in the base. This approach describes the theoretical aspects of the architecture of the whole experimental A.I. system we built in order to provide effective on-line assistance to users of new technological systems: the understanding of "how it works" and "how to complete tasks" from queries in quite natural languages. In our model, procedural semantic networks are used to describe the knowledge of an "ideal" expert…
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Taxonomy
TopicsCognitive Computing and Networks · Semantic Web and Ontologies · Fuzzy Logic and Control Systems
