Publication Date:
2019
abstract:
Classical goal-based reasoning frameworks for agents suppose goals are either achieved fully or not achieved at all: unless achieved completely, the agents have failed to address them. This behavior is different from how people do and therefore is far from real-world scenarios: in every moment a goal has reached a certain level of satisfaction.
This work proposes to extend the classical boolean definition of goal achievement by adopting a novel approach, the Distance to Goal Satisfaction, a metric to measure the distance to the full satisfaction of a logic formula.
In this paper we defined and implemented this metric; subsequently, we extended MUSA, a self-adaptive middleware used to engineer a heterogeneous range of applications. This extension allows solving real situations in which the full achievement represented a limitation.
Iris type:
02.01 Contributo in volume (Capitolo o Saggio)
Keywords:
Partial goal satisfaction; Metric; Multi-agent system
List of contributors:
Cossentino, Massimo; Lopes, Salvatore; Sabatucci, Luca
Book title:
Multi-Agent Systems