2020
DOI: 10.48550/arxiv.2012.08019
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Understanding graph embedding methods and their applications

Abstract: Graph analytics can lead to better quantitative understanding and control of complex networks but traditional methods suffer from high computational cost and excessive memory requirements associated with the high-dimensionality and heterogeneous characteristics of industrial size networks. Graph embedding techniques can be effective in converting high-dimensional sparse graphs into low-dimensional, dense and continuous vector spaces, preserving maximally the graph structure properties. Another type of emerging… Show more

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Cited by 3 publications
(2 citation statements)
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“…Consider the computation, 𝐴 = π‘†π‘π‘Žπ‘Ÿπ‘ π‘’ 𝐡 βŠ™ (𝐢𝐷) β€’ 𝐸 that is used in graph embedding and graph neural networks [27,36]. The Hadamard product, or element-wise product, is denoted by βŠ™ and matrix multiplication is denoted by β€’.…”
Section: Motivating Examplementioning
confidence: 99%
“…Consider the computation, 𝐴 = π‘†π‘π‘Žπ‘Ÿπ‘ π‘’ 𝐡 βŠ™ (𝐢𝐷) β€’ 𝐸 that is used in graph embedding and graph neural networks [27,36]. The Hadamard product, or element-wise product, is denoted by βŠ™ and matrix multiplication is denoted by β€’.…”
Section: Motivating Examplementioning
confidence: 99%
“…Graph embedding Graph embedding converts high-dimensional sparse graphs into low-dimensional, dense and continuous vectors, maintaining the structural properties of a graph to the greatest extent [31]. [18] offer excellent performances in supervised learning tasks (e.g., graph classification), but acquiring large volume of labeled data is a challenge in itself.…”
Section: Figure 6: Computation Graph Of An Example Networkmentioning
confidence: 99%