Abstract
This study reviews the augmented Bayesian learning approach for the
multi-agent decision mechanism. The decision mechanism includes the
probability situation in a dynamic environment. Suggested system
considers the problem of data analysis with distributed task allocation
in a set of cooperative agents. This paper evaluates the exchange of
information and the status of current information within the system and
briefly examines the transition from knowledge base to rule base and
from rule base to task, analyzing the sending of messages between agents
when the information arrives on the system in a dynamic way. Both the
current and past received information are taken into consideration
together with related information rules are derived in the rule base
structure by an augmented Bayesian classifier approach within knowledge
base. In this paper, Expected Maximization (EM) algorithm, which is
itself a learning method, has been developed and adapted for dynamic
agent based data analysis.