On the Theoretical Properties of the Network Jackknife

04/19/2020
by   Qiaohui Lin, et al.
0

We study the properties of a leave-node-out jackknife procedure for network data. Under the sparse graphon model, we prove an Efron-Stein-type inequality, showing that the network jackknife leads to conservative estimates of the variance (in expectation) for any network functional that is invariant to node permutation. For a general class of count functionals, we also establish consistency of the network jackknife. We complement our theoretical analysis with a range of simulated and real-data examples and show that the network jackknife offers competitive performance in cases where other resampling methods are known to be valid. In fact, for several network statistics, we see that the jackknife provides more accurate inferences compared to related methods such as subsampling.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
03/31/2018

Locally Convex Sparse Learning over Networks

We consider a distributed learning setup where a sparse signal is estima...
research
11/07/2022

Sparse Horseshoe Estimation via Expectation-Maximisation

The horseshoe prior is known to possess many desirable properties for Ba...
research
08/28/2023

Hoeffding-type decomposition for U-statistics on bipartite networks

We consider a broad class of random bipartite networks, the distribution...
research
04/29/2020

Identifiability and Consistency of Bayesian Network Structure Learning from Incomplete Data

Bayesian network (BN) structure learning from complete data has been ext...
research
06/08/2016

On clustering network-valued data

Community detection, which focuses on clustering nodes or detecting comm...
research
12/16/2022

Estimating Higher-Order Mixed Memberships via the ℓ_2,∞ Tensor Perturbation Bound

Higher-order multiway data is ubiquitous in machine learning and statist...

Please sign up or login with your details

Forgot password? Click here to reset