Litcius/Paper detail

Dealing with Belief Uncertainty in Domain Models

Loli Burgueño, Paula Muñoz, Robert Clarisó, Jordi Cabot, Sébastien Gérard, Antonio Vallecillo

2022ACM Transactions on Software Engineering and Methodology17 citationsDOIOpen Access PDF

Abstract

There are numerous domains in which information systems need to deal with uncertain information. These uncertainties may originate from different reasons such as vagueness, imprecision, incompleteness, or inconsistencies, and in many cases, they cannot be neglected. In this article, we are interested in representing and processing uncertain information in domain models, considering the stakeholders’ beliefs (opinions). We show how to associate beliefs to model elements and how to propagate and operate with their associated uncertainty so that domain experts can individually reason about their models enriched with their personal opinions. In addition, we address the challenge of combining the opinions of different domain experts on the same model elements, with the goal to come up with informed collective decisions. We provide different strategies and a methodology to optimally merge individual opinions.

Topics & Concepts

VaguenessComputer scienceMerge (version control)Domain (mathematical analysis)Data scienceManagement scienceRisk analysis (engineering)Artificial intelligenceInformation retrievalFuzzy logicMathematical analysisMathematicsMedicineEconomicsMulti-Agent Systems and NegotiationService-Oriented Architecture and Web ServicesBusiness Process Modeling and Analysis