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Network Modeling in Biology
by
Li, Jingyi Jessica
, Li, Lexin
, Wang, Y. X. Rachel
, Huang, Haiyan
in
Brain
/ Complex systems
/ Social networks
/ Software
/ Special Section on Network Data
/ Statistical analysis
/ Statistical inference
/ Statistical methods
2021
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Do you wish to request the book?
Network Modeling in Biology
by
Li, Jingyi Jessica
, Li, Lexin
, Wang, Y. X. Rachel
, Huang, Haiyan
in
Brain
/ Complex systems
/ Social networks
/ Software
/ Special Section on Network Data
/ Statistical analysis
/ Statistical inference
/ Statistical methods
2021
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Journal Article
Network Modeling in Biology
2021
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Overview
The rise of network data in many different domains has offered researchers new insights into the problem of modeling complex systems and propelled the development of numerous innovative statistical methodologies and computational tools. In this paper, we primarily focus on two types of biological networks, gene networks and brain networks, where statistical network modeling has found both fruitful and challenging applications. Unlike other network examples such as social networks where network edges can be directly observed, both gene and brain networks require careful estimation of edges using measured data as a first step. We provide a discussion on existing statistical and computational methods for edge estimation and subsequent statistical inference problems in these two types of biological networks.
Publisher
Institute of Mathematical Statistics
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