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Advances in Bayesian network modelling: Integration of modelling technologies

机译:贝叶斯网络建模的进展:建模技术的集成

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摘要

Bayesian network (BN) modeling is a rapidly advancing field. Here we explore new methods by which BN model development and application are being joined with other tools and model frameworks. Advances include improving areas of Bayesian classifiers and machine-learning algorithms for model structuring and parameterization, and development of time-dynamic models. Increasingly, BN models are being integrated with: management decision networks; structural equation modeling of causal networks; Bayesian neural networks; combined discrete and continuous variables; object-oriented and agent-based models; state-and-transition models; geographic information systems; quantum probability; and other fields. Integrated BNs (IBNs) are becoming useful tools in risk analysis, risk management, and decision science for resource planning and environmental management. In the near future, IBNs may become self-structuring, self-learning systems fed by real-time monitoring data. Such advances may make model validation difficult, and may question model credibility, particularly if based on uncertain sources of knowledge systems and big data.
机译:贝叶斯网络(BN)建模是一个快速发展的领域。在这里,我们探索将BN模型开发和应用与其他工具和模型框架结合在一起的新方法。进展包括改进贝叶斯分类器和用于模型构建和参数化的机器学习算法的领域,以及时动态模型的开发。 BN模型越来越多地与以下方面集成:管理决策网络;因果网络的结构方程建模;贝叶斯神经网络离散和连续变量的组合;面向对象和基于代理的模型;状态和过渡模型;地理信息系统;量子概率和其他领域。集成的BN(IBN)正在成为风险分析,风险管理以及用于资源规划和环境管理的决策科学中的有用工具。在不久的将来,IBN可能会成为由实时监控数据提供的自我构建,自我学习的系统。这样的进步可能使模型验证变得困难,并且可能质疑模型的可信度,尤其是如果基于不确定的知识系统和大数据来源时。

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