Using Deep Q-Learning to Dynamically Toggle between Push/Pull Actions in Computational Trust Mechanisms
Zoi Lygizou, Dimitris Kalles

TL;DR
This paper introduces a Deep Q-Learning based method for trust models in multi-agent systems, enabling trustors to dynamically select between models like CA and FIRE to adapt to changing environments.
Contribution
It presents a novel reinforcement learning approach that allows trustors to decide which trust model to use in real-time based on environmental cues.
Findings
The adaptable trustor outperforms static models in dynamic settings.
Deep Q-Learning effectively predicts optimal trust model selection.
The approach maintains high performance despite environmental changes.
Abstract
Recent work on decentralized computational trust models for open Multi Agent Systems has resulted in the development of CA, a biologically inspired model which focuses on the trustee's perspective. This new model addresses a serious unresolved problem in existing trust and reputation models, namely the inability to handle constantly changing behaviors and agents' continuous entry and exit from the system. In previous work, we compared CA to FIRE, a well-known trust and reputation model, and found that CA is superior when the trustor population changes, whereas FIRE is more resilient to the trustee population changes. Thus, in this paper, we investigate how the trustors can detect the presence of several dynamic factors in their environment and then decide which trust model to employ in order to maximize utility. We frame this problem as a machine learning problem in a partially…
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Taxonomy
TopicsAdversarial Robustness in Machine Learning
