Global and Individualized Community Detection in Inhomogeneous
Multilayer Networks
- URL: http://arxiv.org/abs/2012.00933v2
- Date: Fri, 15 Jan 2021 14:43:42 GMT
- Title: Global and Individualized Community Detection in Inhomogeneous
Multilayer Networks
- Authors: Shuxiao Chen, Sifan Liu, Zongming Ma
- Abstract summary: In network applications, it has become increasingly common to obtain datasets in the form of multiple networks observed on the same set of subjects.
Such datasets can be modeled by multilayer networks where each layer is a separate network itself while different layers are associated and share some common information.
The present paper studies community detection in a stylized yet informative inhomogeneous multilayer network model.
- Score: 14.191073951237772
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In network applications, it has become increasingly common to obtain datasets
in the form of multiple networks observed on the same set of subjects, where
each network is obtained in a related but different experiment condition or
application scenario. Such datasets can be modeled by multilayer networks where
each layer is a separate network itself while different layers are associated
and share some common information. The present paper studies community
detection in a stylized yet informative inhomogeneous multilayer network model.
In our model, layers are generated by different stochastic block models, the
community structures of which are (random) perturbations of a common global
structure while the connecting probabilities in different layers are not
related. Focusing on the symmetric two block case, we establish minimax rates
for both \emph{global estimation} of the common structure and
\emph{individualized estimation} of layer-wise community structures. Both
minimax rates have sharp exponents. In addition, we provide an efficient
algorithm that is simultaneously asymptotic minimax optimal for both estimation
tasks under mild conditions. The optimal rates depend on the \emph{parity} of
the number of most informative layers, a phenomenon that is caused by
inhomogeneity across layers.
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