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Open AccessJournal ArticleDOI

Graph convolutional networks: a comprehensive review

TLDR
A comprehensive review specifically on the emerging field of graph convolutional networks, which is one of the most prominent graph deep learning models, is conducted and several open challenges are presented and potential directions for future research are discussed.
Abstract
Graphs naturally appear in numerous application domains, ranging from social analysis, bioinformatics to computer vision. The unique capability of graphs enables capturing the structural relations among data, and thus allows to harvest more insights compared to analyzing data in isolation. However, it is often very challenging to solve the learning problems on graphs, because (1) many types of data are not originally structured as graphs, such as images and text data, and (2) for graph-structured data, the underlying connectivity patterns are often complex and diverse. On the other hand, the representation learning has achieved great successes in many areas. Thereby, a potential solution is to learn the representation of graphs in a low-dimensional Euclidean space, such that the graph properties can be preserved. Although tremendous efforts have been made to address the graph representation learning problem, many of them still suffer from their shallow learning mechanisms. Deep learning models on graphs (e.g., graph neural networks) have recently emerged in machine learning and other related areas, and demonstrated the superior performance in various problems. In this survey, despite numerous types of graph neural networks, we conduct a comprehensive review specifically on the emerging field of graph convolutional networks, which is one of the most prominent graph deep learning models. First, we group the existing graph convolutional network models into two categories based on the types of convolutions and highlight some graph convolutional network models in details. Then, we categorize different graph convolutional networks according to the areas of their applications. Finally, we present several open challenges in this area and discuss potential directions for future research.

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Posted ContentDOI

From Tabulated Data to Knowledge Graph: A Novel Way of Improving the Performance of the Classification Models in the Healthcare Data

TL;DR: In this paper, a technique for converting tabulated data into data graphs, incorporating structural correlations, has been proposed to capture structural correlations between data, allowing us to gain a deeper insight in comparison to carrying out isolated data analysis.
Proceedings ArticleDOI

Spatio-Temporal Graph Convolutional Networks for Short-Term Traffic Forecasting

TL;DR: The considered graph convolutional networks are able to efficiently capture spatio-temporal correlations in traffic data and outperforms the baseline methods on the transportation network of the Samara city, Russia.
Proceedings ArticleDOI

Ultrasound breast tumor detection based on vision graph neural network

TL;DR: In this paper , the authors implemented a vision graph neural networks (ViG)-based pipeline that can achieve accurate binary classification (normal vs. breast tumor) and multiclass classification from breast ultrasound images.
Proceedings ArticleDOI

End-to-end brain tumor detection using a graph-feature-based classifier

TL;DR: In this article , the authors used fully-automated graph-feature-based classifiers for end-to-end brain tumor detection, indicating an overall classification accuracy of 94.89%.
Journal ArticleDOI

Multiple Learning Features–Enhanced Knowledge Tracing Based on Learner–Resource Response Channels

Zhi-Feng Wang, +1 more
- 12 Jun 2023 - 
TL;DR: In this article , the authors proposed the multiple learning features, enhanced knowledge tracing (MLFKT) framework, which constructs learner-resource response (LRR) channels based on psychometric theory, establishing stronger intrinsic connections among learning features and overcoming the limitations of the item response theory.
References
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Proceedings Article

Very Deep Convolutional Networks for Large-Scale Image Recognition

TL;DR: In this paper, the authors investigated the effect of the convolutional network depth on its accuracy in the large-scale image recognition setting and showed that a significant improvement on the prior-art configurations can be achieved by pushing the depth to 16-19 layers.
Proceedings ArticleDOI

Fully convolutional networks for semantic segmentation

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