[BUKU][B] Lifelong machine learning

Z Chen, B Liu - 2018 - books.google.com
Lifelong Machine Learning, Second Edition is an introduction to an advanced machine
learning paradigm that continuously learns by accumulating past knowledge that it then …

Bridging the gap between spatial and spectral domains: A unified framework for graph neural networks

Z Chen, F Chen, L Zhang, T Ji, K Fu, L Zhao… - ACM Computing …, 2023 - dl.acm.org
Deep learning's performance has been extensively recognized recently. Graph neural
networks (GNNs) are designed to deal with graph-structural data that classical deep …

A survey of the state of the art in learning the kernels

ME Abbasnejad, D Ramachandram… - … and information systems, 2012 - Springer
In recent years, the machine learning community has witnessed a tremendous growth in the
development of kernel-based learning algorithms. However, the performance of this class of …

[PDF][PDF] Linear algorithms for online multitask classification

G Cavallanti, N Cesa-Bianchi, C Gentile - The Journal of Machine Learning …, 2010 - jmlr.org
We introduce new Perceptron-based algorithms for the online multitask binary classification
problem. Under suitable regularity conditions, our algorithms are shown to improve on their …

Multiple graph label propagation by sparse integration

M Karasuyama, H Mamitsuka - IEEE transactions on neural …, 2013 - ieeexplore.ieee.org
Graph-based approaches have been most successful in semisupervised learning. In this
paper, we focus on label propagation in graph-based semisupervised learning. One …

Pathway-based genomics prediction using generalized elastic net

A Sokolov, DE Carlin, EO Paull… - PLoS computational …, 2016 - journals.plos.org
We present a novel regularization scheme called The Generalized Elastic Net (GELnet) that
incorporates gene pathway information into feature selection. The proposed formulation is …

Combining graph Laplacians for semi--supervised learning

A Argyriou, M Herbster, M Pontil - Advances in Neural …, 2005 - proceedings.neurips.cc
A foundational problem in semi-supervised learning is the construction of a graph
underlying the data. We propose to use a method which optimally combines a number of …

A unifying framework for spectrum-preserving graph sparsification and coarsening

G Bravo Hermsdorff… - Advances in Neural …, 2019 - proceedings.neurips.cc
Abstract How might one``reduce''a graph? That is, generate a smaller graph that preserves
the global structure at the expense of discarding local details? There has been extensive …

Lifelong learning of graph neural networks for open-world node classification

L Galke, B Franke, T Zielke… - 2021 International Joint …, 2021 - ieeexplore.ieee.org
Graph neural networks (GNNs) have emerged as the standard method for numerous tasks
on graph-structured data such as node classification. However, real-world graphs are often …

Graph structure reforming framework enhanced by commute time distance for graph classification

W Yu, X Ma, J Bailey, Y Zhan, J Wu, B Du, W Hu - Neural Networks, 2023 - Elsevier
As a graph data mining task, graph classification has high academic value and wide
practical application. Among them, the graph neural network-based method is one of the …