Literature DB >> 33817007

Survey on graph embeddings and their applications to machine learning problems on graphs.

Ilya Makarov1,2, Dmitrii Kiselev1, Nikita Nikitinsky3, Lovro Subelj2.   

Abstract

Dealing with relational data always required significant computational resources, domain expertise and task-dependent feature engineering to incorporate structural information into a predictive model. Nowadays, a family of automated graph feature engineering techniques has been proposed in different streams of literature. So-called graph embeddings provide a powerful tool to construct vectorized feature spaces for graphs and their components, such as nodes, edges and subgraphs under preserving inner graph properties. Using the constructed feature spaces, many machine learning problems on graphs can be solved via standard frameworks suitable for vectorized feature representation. Our survey aims to describe the core concepts of graph embeddings and provide several taxonomies for their description. First, we start with the methodological approach and extract three types of graph embedding models based on matrix factorization, random-walks and deep learning approaches. Next, we describe how different types of networks impact the ability of models to incorporate structural and attributed data into a unified embedding. Going further, we perform a thorough evaluation of graph embedding applications to machine learning problems on graphs, among which are node classification, link prediction, clustering, visualization, compression, and a family of the whole graph embedding algorithms suitable for graph classification, similarity and alignment problems. Finally, we overview the existing applications of graph embeddings to computer science domains, formulate open problems and provide experiment results, explaining how different networks properties result in graph embeddings quality in the four classic machine learning problems on graphs, such as node classification, link prediction, clustering and graph visualization. As a result, our survey covers a new rapidly growing field of network feature engineering, presents an in-depth analysis of models based on network types, and overviews a wide range of applications to machine learning problems on graphs.
© 2021 Makarov et al.

Entities:  

Keywords:  Geometric deep learning; Graph embedding; Graph neural networks; Graph visualization; Knowledge representation; Link prediction; Machine learning; Network science; Node classification; Node clustering

Year:  2021        PMID: 33817007      PMCID: PMC7959646          DOI: 10.7717/peerj-cs.357

Source DB:  PubMed          Journal:  PeerJ Comput Sci        ISSN: 2376-5992


  35 in total

1.  A global geometric framework for nonlinear dimensionality reduction.

Authors:  J B Tenenbaum; V de Silva; J C Langford
Journal:  Science       Date:  2000-12-22       Impact factor: 47.728

2.  Collective dynamics of 'small-world' networks.

Authors:  D J Watts; S H Strogatz
Journal:  Nature       Date:  1998-06-04       Impact factor: 49.962

3.  Network embedding-based representation learning for single cell RNA-seq data.

Authors:  Xiangyu Li; Weizheng Chen; Yang Chen; Xuegong Zhang; Jin Gu; Michael Q Zhang
Journal:  Nucleic Acids Res       Date:  2017-11-02       Impact factor: 16.971

4.  Modeling polypharmacy side effects with graph convolutional networks.

Authors:  Marinka Zitnik; Monica Agrawal; Jure Leskovec
Journal:  Bioinformatics       Date:  2018-07-01       Impact factor: 6.937

5.  Identification of pathways associated with chemosensitivity through network embedding.

Authors:  Sheng Wang; Edward Huang; Junmei Cairns; Jian Peng; Liewei Wang; Saurabh Sinha
Journal:  PLoS Comput Biol       Date:  2019-03-20       Impact factor: 4.475

6.  Prediction of drug-target interaction networks from the integration of chemical and genomic spaces.

Authors:  Yoshihiro Yamanishi; Michihiro Araki; Alex Gutteridge; Wataru Honda; Minoru Kanehisa
Journal:  Bioinformatics       Date:  2008-07-01       Impact factor: 6.937

Review 7.  A Comprehensive Survey on Graph Neural Networks.

Authors:  Zonghan Wu; Shirui Pan; Fengwen Chen; Guodong Long; Chengqi Zhang; Philip S Yu
Journal:  IEEE Trans Neural Netw Learn Syst       Date:  2021-01-04       Impact factor: 10.451

8.  DINIES: drug-target interaction network inference engine based on supervised analysis.

Authors:  Yoshihiro Yamanishi; Masaaki Kotera; Yuki Moriya; Ryusuke Sawada; Minoru Kanehisa; Susumu Goto
Journal:  Nucleic Acids Res       Date:  2014-05-16       Impact factor: 16.971

9.  Efficient embedding of complex networks to hyperbolic space via their Laplacian.

Authors:  Gregorio Alanis-Lobato; Pablo Mier; Miguel A Andrade-Navarro
Journal:  Sci Rep       Date:  2016-07-22       Impact factor: 4.379

10.  Predicting multicellular function through multi-layer tissue networks.

Authors:  Marinka Zitnik; Jure Leskovec
Journal:  Bioinformatics       Date:  2017-07-15       Impact factor: 6.937

View more
  3 in total

1.  Fusion of text and graph information for machine learning problems on networks.

Authors:  Ilya Makarov; Mikhail Makarov; Dmitrii Kiselev
Journal:  PeerJ Comput Sci       Date:  2021-05-11

2.  Unsupervised Event Graph Representation and Similarity Learning on Biomedical Literature.

Authors:  Giacomo Frisoni; Gianluca Moro; Giulio Carlassare; Antonella Carbonaro
Journal:  Sensors (Basel)       Date:  2021-12-21       Impact factor: 3.576

3.  Temporal network embedding framework with causal anonymous walks representations.

Authors:  Ilya Makarov; Andrey Savchenko; Arseny Korovko; Leonid Sherstyuk; Nikita Severin; Dmitrii Kiselev; Aleksandr Mikheev; Dmitrii Babaev
Journal:  PeerJ Comput Sci       Date:  2022-01-20
  3 in total

北京卡尤迪生物科技股份有限公司 © 2022-2023.