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Finding Efficient Graph Embeddings and Processing them by a CNN-based Tool
by
Giraszi, Tamas
, Hajdu, Andras
, Tiba, Attila
in
Algorithms
/ Artificial Intelligence
/ Artificial neural networks
/ Business metrics
/ Carcinogens
/ Classification
/ Complex Systems
/ Computational Intelligence
/ Computer Science
/ Datasets
/ Embedding
/ Graph representations
/ Inhomogeneity
/ Machine learning
/ Mutation
/ Neural networks
/ Statistical methods
2024
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Finding Efficient Graph Embeddings and Processing them by a CNN-based Tool
by
Giraszi, Tamas
, Hajdu, Andras
, Tiba, Attila
in
Algorithms
/ Artificial Intelligence
/ Artificial neural networks
/ Business metrics
/ Carcinogens
/ Classification
/ Complex Systems
/ Computational Intelligence
/ Computer Science
/ Datasets
/ Embedding
/ Graph representations
/ Inhomogeneity
/ Machine learning
/ Mutation
/ Neural networks
/ Statistical methods
2024
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Do you wish to request the book?
Finding Efficient Graph Embeddings and Processing them by a CNN-based Tool
by
Giraszi, Tamas
, Hajdu, Andras
, Tiba, Attila
in
Algorithms
/ Artificial Intelligence
/ Artificial neural networks
/ Business metrics
/ Carcinogens
/ Classification
/ Complex Systems
/ Computational Intelligence
/ Computer Science
/ Datasets
/ Embedding
/ Graph representations
/ Inhomogeneity
/ Machine learning
/ Mutation
/ Neural networks
/ Statistical methods
2024
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Finding Efficient Graph Embeddings and Processing them by a CNN-based Tool
Journal Article
Finding Efficient Graph Embeddings and Processing them by a CNN-based Tool
2024
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Overview
We introduce new tools to support finding efficient graph embedding techniques for graph databases and to process their outputs using deep learning for classification scenarios. Accordingly, we investigate the possibility of creating an ensemble of different graph embedding methods to raise accuracy and present an interconnected neural network-based ensemble to increase the efficiency of the member classification algorithms. We also introduce a new convolutional neural network-based architecture that can be generally proposed to process vectorized graph data provided by various graph embedding methods and compare it with other architectures in the literature to show the competitiveness of our approach. We also exhibit a statistical-based inhomogeneity level estimation procedure to select the optimal embedding for a given graph database efficiently. The efficiency of our framework is exhaustively tested using several publicly available graph datasets and numerous state-of-the-art graph embedding techniques. Our experimental results for classification tasks have proved the competitiveness of our approach by outperforming the state-of-the-art frameworks.
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