Dynamic Stacked Generalization for Node Classification on Networks
Machine Learning
2016-10-18 v1 Machine Learning
Social and Information Networks
Applications
Abstract
We propose a novel stacked generalization (stacking) method as a dynamic ensemble technique using a pool of heterogeneous classifiers for node label classification on networks. The proposed method assigns component models a set of functional coefficients, which can vary smoothly with certain topological features of a node. Compared to the traditional stacking model, the proposed method can dynamically adjust the weights of individual models as we move across the graph and provide a more versatile and significantly more accurate stacking model for label prediction on a network. We demonstrate the benefits of the proposed model using both a simulation study and real data analysis.
Cite
@article{arxiv.1610.04804,
title = {Dynamic Stacked Generalization for Node Classification on Networks},
author = {Zhen Han and Alyson Wilson},
journal= {arXiv preprint arXiv:1610.04804},
year = {2016}
}
Comments
9 pages, 6 figures