Probabilistic reasoning in multiagent systems - a graphical models approach
نویسنده
چکیده
منابع مشابه
Probabilistic Reasoning in Multiagent Systems
This book investigates the opportunities in building intelligent decision support systems offered by multiagent distributed probabilistic reasoning. Probabilistic reasoning with graphical models, also known as Bayesian networks or belief networks, has become an active field of research and practice in artificial intelligence, operations research, and statistics in the past two decades. The succ...
متن کاملRule-based joint fuzzy and probabilistic networks
One of the important challenges in Graphical models is the problem of dealing with the uncertainties in the problem. Among graphical networks, fuzzy cognitive map is only capable of modeling fuzzy uncertainty and the Bayesian network is only capable of modeling probabilistic uncertainty. In many real issues, we are faced with both fuzzy and probabilistic uncertainties. In these cases, the propo...
متن کاملSimulation of Graphical Models for Multiagent Probabilistic Inference
Multiply-sectioned Bayesian networks (MSBNs) extend Bayesian networks to graphical models for multiagent probabilistic reasoning. The empirical study of algorithms for manipulations of MSBNs (e.g., verification, compilation, and inference) requires experimental MSBNs. As engineering MSBNs in large problem domains requires significant knowledge and engineering effort, the authors explore automat...
متن کاملGraphical Multiagent Models ( Extended
I introduce a graphical representation for modeling multiagent systems based on different kinds of reasoning about agent behavior. I seek to investigate this graphical model’s predictive and representative capabilities across various domains, and examine methods for learning the graphical structure from agent interaction data. I also propose to explore the framework’s scalability in large real-...
متن کاملLearning and Predicting Dynamic Network Behavior with Graphical Multiagent Models
Factored models of multiagent systems address the complexity of joint behavior by exploiting locality in agent interactions. History-dependent graphical multiagent models (hGMMs) further capture dynamics by conditioning behavior on history. The hGMM framework also brings new elements of strategic reasoning and more expressive powers to modeling information diffusion over networks. We propose a ...
متن کامل