TY - JOUR
T1 - SNCA: Semi-Supervised Node Classification for Evolving Large Attributed Graphs
AU - Abbasi, Faima
AU - Muzammal, Muhammad
AU - Qu, Qiang
AU - Riaz, Farhan
AU - Ashraf, Jawad
PY - 2024/9/1
Y1 - 2024/9/1
N2 - Attributed graphs have an additional sign vector for each node. Typically, edge signs represent like or dislike relationship between the node pairs. This has applications in domains, such as recommender systems, personalised search, etc. However, limited availability of edge sign information in attributed networks requires inferring the underlying graph embeddings to fill-in the knowledge gap. Such inference is performed by way of node classification which aims to deduce the node characteristics based on the topological structure of the graph and signed interactions between the nodes. The study of attributed networks is challenging due to noise, sparsity, and class imbalance issues. In this work, we consider node centrality in conjunction with edge signs to contemplate the node classification problem in attributed networks. We propose Semi-supervised Node Classification in Attributed graphs (SNCA). SNCA is robust to underlying network noise, and has in-built class imbalance handling capabilities. We perform an extensive experimental study on real-world datasets to showcase the efficiency, scalability, robustness, and pertinence of the solution. The performance results demonstrate the suitability of the solution for large attributed graphs in real-world settings.
AB - Attributed graphs have an additional sign vector for each node. Typically, edge signs represent like or dislike relationship between the node pairs. This has applications in domains, such as recommender systems, personalised search, etc. However, limited availability of edge sign information in attributed networks requires inferring the underlying graph embeddings to fill-in the knowledge gap. Such inference is performed by way of node classification which aims to deduce the node characteristics based on the topological structure of the graph and signed interactions between the nodes. The study of attributed networks is challenging due to noise, sparsity, and class imbalance issues. In this work, we consider node centrality in conjunction with edge signs to contemplate the node classification problem in attributed networks. We propose Semi-supervised Node Classification in Attributed graphs (SNCA). SNCA is robust to underlying network noise, and has in-built class imbalance handling capabilities. We perform an extensive experimental study on real-world datasets to showcase the efficiency, scalability, robustness, and pertinence of the solution. The performance results demonstrate the suitability of the solution for large attributed graphs in real-world settings.
KW - attributed networks
KW - node classification
KW - recommender systems
UR - http://www.scopus.com/inward/record.url?scp=85202897363&partnerID=8YFLogxK
U2 - 10.26599/BDMA.2024.9020033
DO - 10.26599/BDMA.2024.9020033
M3 - Article
AN - SCOPUS:85202897363
SN - 2096-0654
VL - 7
SP - 794
EP - 808
JO - Big Data Mining and Analytics
JF - Big Data Mining and Analytics
IS - 3
ER -