Learnable Graph Convolutional Network and Feature Fusion for Multi-view
Learning
- URL: http://arxiv.org/abs/2211.09155v1
- Date: Wed, 16 Nov 2022 19:07:12 GMT
- Title: Learnable Graph Convolutional Network and Feature Fusion for Multi-view
Learning
- Authors: Zhaoliang Chen, Lele Fu, Jie Yao, Wenzhong Guo, Claudia Plant, Shiping
Wang
- Abstract summary: This paper proposes a joint deep learning framework called Learnable Graph Convolutional Network and Feature Fusion (LGCN-FF)
It consists of two stages: feature fusion network and learnable graph convolutional network.
The proposed LGCN-FF is validated to be superior to various state-of-the-art methods in multi-view semi-supervised classification.
- Score: 30.74535386745822
- License: http://arxiv.org/licenses/nonexclusive-distrib/1.0/
- Abstract: In practical applications, multi-view data depicting objectives from assorted
perspectives can facilitate the accuracy increase of learning algorithms.
However, given multi-view data, there is limited work for learning
discriminative node relationships and graph information simultaneously via
graph convolutional network that has drawn the attention from considerable
researchers in recent years. Most of existing methods only consider the
weighted sum of adjacency matrices, yet a joint neural network of both feature
and graph fusion is still under-explored. To cope with these issues, this paper
proposes a joint deep learning framework called Learnable Graph Convolutional
Network and Feature Fusion (LGCN-FF), consisting of two stages: feature fusion
network and learnable graph convolutional network. The former aims to learn an
underlying feature representation from heterogeneous views, while the latter
explores a more discriminative graph fusion via learnable weights and a
parametric activation function dubbed Differentiable Shrinkage Activation (DSA)
function. The proposed LGCN-FF is validated to be superior to various
state-of-the-art methods in multi-view semi-supervised classification.
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