Goal-Oriented Semantic Resource Allocation with Cumulative Prospect Theoretic Agents
By: Symeon Vaidanis, Photios A. Stavrou, Marios Kountouris
Potential Business Impact:
Helps computers make smarter choices when things are uncertain.
We introduce a resource allocation framework for goal-oriented semantic networks, where participating agents assess system quality through subjective (e.g., context-dependent) perceptions. To accommodate this, our model accounts for agents whose preferences deviate from traditional expected utility theory (EUT), specifically incorporating cumulative prospect theory (CPT) preferences. We develop a comprehensive analytical framework that captures human-centric aspects of decision-making and risky choices under uncertainty, such as risk perception, loss aversion, and perceptual distortions in probability metrics. By identifying essential modifications in traditional resource allocation design principles required for agents with CPT preferences, we showcase the framework's relevance through its application to the problem of power allocation in multi-channel wireless communication systems.
Similar Papers
Optimization for Semantic-Aware Resource Allocation under CPT-based Utilities
Information Theory
Helps computers share information smarter, considering risks.
Risk-aware Markov Decision Processes Using Cumulative Prospect Theory
Logic in Computer Science
Helps computers make better choices over time.
Distributed resource allocation in cognitive radio networks with a game learning approach to improve aggregate system capacity
Networking and Internet Architecture
Lets radios share airwaves smartly.