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Bayesian Network Structure Learning Method Based on Causal Direction Graph for Protein Signaling Networks
by
Wang, Cheng
, Wei, Xiaohan
, Zhang, Yulai
in
Algorithms
/ Bayesian analysis
/ Bayesian network
/ Bayesian statistical decision theory
/ Bioinformatics
/ causal direction
/ Cellular signal transduction
/ Combinatorial analysis
/ Graph theory
/ Machine learning
/ Networks
/ Neural networks
/ Optimization
/ protein signaling network
/ Proteins
/ Signaling
/ Statistical analysis
/ Structural equation modeling
/ structure learning
/ Variables
2022
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Bayesian Network Structure Learning Method Based on Causal Direction Graph for Protein Signaling Networks
by
Wang, Cheng
, Wei, Xiaohan
, Zhang, Yulai
in
Algorithms
/ Bayesian analysis
/ Bayesian network
/ Bayesian statistical decision theory
/ Bioinformatics
/ causal direction
/ Cellular signal transduction
/ Combinatorial analysis
/ Graph theory
/ Machine learning
/ Networks
/ Neural networks
/ Optimization
/ protein signaling network
/ Proteins
/ Signaling
/ Statistical analysis
/ Structural equation modeling
/ structure learning
/ Variables
2022
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Do you wish to request the book?
Bayesian Network Structure Learning Method Based on Causal Direction Graph for Protein Signaling Networks
by
Wang, Cheng
, Wei, Xiaohan
, Zhang, Yulai
in
Algorithms
/ Bayesian analysis
/ Bayesian network
/ Bayesian statistical decision theory
/ Bioinformatics
/ causal direction
/ Cellular signal transduction
/ Combinatorial analysis
/ Graph theory
/ Machine learning
/ Networks
/ Neural networks
/ Optimization
/ protein signaling network
/ Proteins
/ Signaling
/ Statistical analysis
/ Structural equation modeling
/ structure learning
/ Variables
2022
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Bayesian Network Structure Learning Method Based on Causal Direction Graph for Protein Signaling Networks
Journal Article
Bayesian Network Structure Learning Method Based on Causal Direction Graph for Protein Signaling Networks
2022
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Overview
Constructing the structure of protein signaling networks by Bayesian network technology is a key issue in the field of bioinformatics. The primitive structure learning algorithms of the Bayesian network take no account of the causal relationships between variables, which is unfortunately important in the application of protein signaling networks. In addition, as a combinatorial optimization problem with a large searching space, the computational complexities of the structure learning algorithms are unsurprisingly high. Therefore, in this paper, the causal directions between any two variables are calculated first and stored in a graph matrix as one of the constraints of structure learning. A continuous optimization problem is constructed next by using the fitting losses of the corresponding structure equations as the target, and the directed acyclic prior is used as another constraint at the same time. Finally, a pruning procedure is developed to keep the result of the continuous optimization problem sparse. Experiments show that the proposed method improves the structure of the Bayesian network compared with the existing methods on both the artificial data and the real data, meanwhile, the computational burdens are also reduced significantly.
Publisher
MDPI AG,MDPI
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