TL;DR
This paper provides a structured taxonomy and analysis of multi-objective multi-agent decision making, emphasizing utility-based evaluation and comparing different optimization criteria to guide future research in the field.
Contribution
It introduces a new taxonomy for classifying MOMAS based on reward structures and utility application, clarifying the state-of-the-art and future research directions.
Findings
Developed a taxonomy classifying MOMAS settings
Analyzed solution concepts under ESR and SER criteria
Identified promising future research directions
Abstract
The majority of multi-agent system (MAS) implementations aim to optimise agents' policies with respect to a single objective, despite the fact that many real-world problem domains are inherently multi-objective in nature. Multi-objective multi-agent systems (MOMAS) explicitly consider the possible trade-offs between conflicting objective functions. We argue that, in MOMAS, such compromises should be analysed on the basis of the utility that these compromises have for the users of a system. As is standard in multi-objective optimisation, we model the user utility using utility functions that map value or return vectors to scalar values. This approach naturally leads to two different optimisation criteria: expected scalarised returns (ESR) and scalarised expected returns (SER). We develop a new taxonomy which classifies multi-objective multi-agent decision making settings, on the basis of…
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