AIMar 16

Survey of Various Fuzzy and Uncertain Decision-Making Methods

arXiv:2603.157095.2h-index: 4
AI Analysis

It provides a structured overview for researchers and practitioners dealing with vague or incomplete information in decision-making, but it is incremental as a survey.

This survey organizes uncertainty-aware multi-criteria decision-making methods into a task-oriented taxonomy, summarizing problem settings, weight elicitation, and solution procedures to guide method selection based on robustness and interpretability.

Decision-making in real applications is often affected by vagueness, incomplete information, heterogeneous data, and conflicting expert opinions. This survey reviews uncertainty-aware multi-criteria decision-making (MCDM) and organizes the field into a concise, task-oriented taxonomy. We summarize problem-level settings (discrete, group/consensus, dynamic, multi-stage, multi-level, multiagent, and multi-scenario), weight elicitation (subjective and objective schemes under fuzzy/linguistic inputs), and inter-criteria structure and causality modelling. For solution procedures, we contrast compensatory scoring methods, distance-to-reference and compromise approaches, and non-compensatory outranking frameworks for ranking or sorting. We also outline rule/evidence-based and sequential decision models that produce interpretable rules or policies. The survey highlights typical inputs, core computational steps, and primary outputs, and provides guidance on choosing methods according to robustness, interpretability, and data availability. It concludes with open directions on explainable uncertainty integration, stability, and scalability in large-scale and dynamic decision environments.

Foundations

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