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A multi-agent systems approach to distributed bayesian information fusion

机译:分布式贝叶斯信息融合的多主体系统方法

摘要

This paper introduces design principles for modular Bayesian fusion systems which can (i) cope with large quantities of heterogeneous information and (ii) can adapt to changing constellations of information sources on the fly. The presented approach exploits the locality of relations in causal probabilistic processes, which facilitates decentralized modeling and information fusion. Observed events resulting from stochastic causal processes can be modeled with the help of Bayesian networks, compact and mathematically rigorous probabilistic models. With the help of the theory of Bayesian networks and factor graphs we derive design and organization rules for modular fusion systems which implement exact belief propagation without centralized configuration and fusion control. These rules are applied in distributed perception networks (DPN), a multi-agent systems approach to distributed Bayesian information fusion. While each DPN agent has limited fusion capabilities, multiple DPN agents can autonomously collaborate to form complex modular fusion systems. Such self-organizing systems of agents can adapt to the available information sources at runtime and can infer critical hidden events through interpretation of complex patterns consisting of many heterogeneous observations.
机译:本文介绍了模块化贝叶斯融合系统的设计原理,该系统可以(i)处理大量的异构信息,并且(ii)可以适应动态变化的信息源群。提出的方法利用因果概率过程中关系的局部性,这有利于分散建模和信息融合。可以使用贝叶斯网络,紧凑且数学上严格的概率模型对随机因果过程导致的可观察事件进行建模。借助贝叶斯网络和因子图的理论,我们得出了模块化融合系统的设计和组织规则,该系统实现了精确的置信度传播,而无需集中配置和融合控制。这些规则适用于分布式感知网络(DPN),这是一种用于分布式贝叶斯信息融合的多主体系统方法。尽管每个DPN代理具有有限的融合功能,但多个DPN代理可以自主协作以形成复杂的模块化融合系统。这种代理的自组织系统可以在运行时适应可用的信息源,并且可以通过解释由许多异构观察组成的复杂模式来推断关键的隐藏事件。

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