Title of article :
Multiagent bayesian forecasting of structural time-invariant dynamic systems with graphical models Original Research Article
Author/Authors :
Yang Xiang، نويسنده , , James Smith، نويسنده , , Jeff Kroes، نويسنده ,
Issue Information :
روزنامه با شماره پیاپی سال 2011
Abstract :
Time series are found widely in engineering and science. We study forecasting of stochastic, dynamic systems based on observations from multivariate time series. We model the domain as a dynamic multiply sectioned Bayesian network (DMSBN) and populate the domain by a set of proprietary, cooperative agents. We propose an algorithm suite that allows the agents to perform one-step forecasts with distributed probabilistic inference. We show that as long as the DMSBN is structural time-invariant (possibly parametric time-variant), the forecast is exact and its time complexity is exponentially more efficient than using dynamic Bayesian networks (DBNs). In comparison with independent DBN-based agents, multiagent DMSBNs produce more accurate forecasts. The effectiveness of the framework is demonstrated through experiments on a supply chain testbed.
Keywords :
Graphical models , Bayesian networks , Multiply sectioned Bayesian networks , Multiagent systems , Forecasting , Probabilistic inference
Journal title :
International Journal of Approximate Reasoning
Journal title :
International Journal of Approximate Reasoning