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Estimation of Directed Acyclic Graphs Through Two-Stage Adaptive Lasso for Gene Network Inference
by
Chen, Gong
, Zhong, Hua
, Han, Sung Won
, Cheon, Myun-Seok
in
Algorithms
/ Applications and Case Studies
/ Causal models
/ Causality
/ Decision making models
/ Directed acyclic graphs
/ Effectiveness
/ Efficiency
/ equations
/ Gene expression
/ gene regulatory networks
/ Genes
/ Genetics
/ Graph theory
/ Graphical models
/ Graphs
/ Inference
/ Lasso estimation
/ Mathematical models
/ Neighborhood selection
/ Neighborhoods
/ Neighbourhoods
/ Networks
/ Probabilistic graphical model
/ Regression analysis
/ Regulation
/ Rule ordering
/ Simulation
/ Statistics
/ Structure equation model
2016
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Estimation of Directed Acyclic Graphs Through Two-Stage Adaptive Lasso for Gene Network Inference
by
Chen, Gong
, Zhong, Hua
, Han, Sung Won
, Cheon, Myun-Seok
in
Algorithms
/ Applications and Case Studies
/ Causal models
/ Causality
/ Decision making models
/ Directed acyclic graphs
/ Effectiveness
/ Efficiency
/ equations
/ Gene expression
/ gene regulatory networks
/ Genes
/ Genetics
/ Graph theory
/ Graphical models
/ Graphs
/ Inference
/ Lasso estimation
/ Mathematical models
/ Neighborhood selection
/ Neighborhoods
/ Neighbourhoods
/ Networks
/ Probabilistic graphical model
/ Regression analysis
/ Regulation
/ Rule ordering
/ Simulation
/ Statistics
/ Structure equation model
2016
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Do you wish to request the book?
Estimation of Directed Acyclic Graphs Through Two-Stage Adaptive Lasso for Gene Network Inference
by
Chen, Gong
, Zhong, Hua
, Han, Sung Won
, Cheon, Myun-Seok
in
Algorithms
/ Applications and Case Studies
/ Causal models
/ Causality
/ Decision making models
/ Directed acyclic graphs
/ Effectiveness
/ Efficiency
/ equations
/ Gene expression
/ gene regulatory networks
/ Genes
/ Genetics
/ Graph theory
/ Graphical models
/ Graphs
/ Inference
/ Lasso estimation
/ Mathematical models
/ Neighborhood selection
/ Neighborhoods
/ Neighbourhoods
/ Networks
/ Probabilistic graphical model
/ Regression analysis
/ Regulation
/ Rule ordering
/ Simulation
/ Statistics
/ Structure equation model
2016
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Estimation of Directed Acyclic Graphs Through Two-Stage Adaptive Lasso for Gene Network Inference
Journal Article
Estimation of Directed Acyclic Graphs Through Two-Stage Adaptive Lasso for Gene Network Inference
2016
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Overview
Graphical models are a popular approach to find dependence and conditional independence relationships between gene expressions. Directed acyclic graphs (DAGs) are a special class of directed graphical models, where all the edges are directed edges and contain no directed cycles. The DAGs are well known models for discovering causal relationships between genes in gene regulatory networks. However, estimating DAGs without assuming known ordering is challenging due to high dimensionality, the acyclic constraints, and the presence of equivalence class from observational data. To overcome these challenges, we propose a two-stage adaptive Lasso approach, called NS-DIST, which performs neighborhood selection (NS) in stage 1, and then estimates DAGs by the discrete improving search with Tabu (DIST) algorithm within the selected neighborhood. Simulation studies are presented to demonstrate the effectiveness of the method and its computational efficiency. Two real data examples are used to demonstrate the practical usage of our method for gene regulatory network inference. Supplementary materials for this article are available online.
Publisher
Taylor & Francis,Taylor & Francis Group,LLC,Taylor & Francis Ltd
Subject
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