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首页> 外文期刊>Cybernetics, IEEE Transactions on >Variational Bayesian Approach for Causality and Contemporaneous Correlation Features Inference in Industrial Process Data
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Variational Bayesian Approach for Causality and Contemporaneous Correlation Features Inference in Industrial Process Data

机译:工业过程数据中因果关系和同期相关特征推断的变分贝叶斯方法

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摘要

In this paper, a hybrid model is proposed to simultaneously mine causal connections and features responsible for contemporaneous correlations in a multivariate process. The model is developed by combining the vector auto-regressive exogenous model and the factor analysis model. The parameters of the resulting model are regularized using the hierarchical prior distributions for pruning insignificant/irrelevant ones from the model. It is then estimated under the variational Bayesian expectation maximization framework. The estimation is initiated with a complex model which is then systematically reduced to a simpler model that retains only the parameters corresponding to significant causal connections and contemporaneous correlations. Model reduction is carried out through a series of deterministic jumps from complex models to simpler models using a relevance criterion. The approach is illustrated with a number of simulated examples and an industrial case study.
机译:在本文中,提出了一种混合模型来同时挖掘因果关系和在多变量过程中引起同期关联的特征。该模型是通过将向量自回归外生模型和因子分析模型相结合而开发的。使用分层的先验分布对所得模型的参数进行正则化,以从模型中删除不重要/不相关的分布。然后在变分贝叶斯期望最大化框架下进行估计。估算从一个复杂的模型开始,然后将其系统化为一个简单的模型,该模型仅保留与重要因果关系和同期相关性相对应的参数。通过使用相关性准则从复杂模型到较简单模型的一系列确定性跳跃来执行模型归约。通过大量模拟示例和工业案例研究说明了该方法。

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