Ziad Kobti
Paper download is intended for registered attendees only, and is
subjected to the IEEE Copyright Policy. Any other use is strongly forbidden.
Papers from this author
Social Network Analysis Using Knowledge-Graph Embeddings and Convolution Operations
Bonaventure Chidube Molokwu, Shaon Bhatta Shuvo, Ziad Kobti, Narayan C. Kar
Auto-TLDR; RLVECO: Representation Learning via Knowledge- Graph Embeddings and Convolution Operations for Social Network Analysis
Abstract Slides Poster Similar
Link prediction and node classification tasks in Social Network Analysis (SNA) remain open research problems with respect to Artificial Intelligence (AI). Thus, the inherent representations about social network structures can be effectively harnessed for training AI models in a bid to predict ties as well as detect clusters via classification of actors with regard to a given social network structure. In this paper, we have proposed a special hybrid model comprising dual layers of Feature Learning (FL): Representation Learning via Knowledge- Graph Embeddings and Convolution Operations (RLVECO). The architecture of RLVECO is tailored towards analyzing and extracting meaningful representations from social network structures so as to aid in link prediction, node classification, and community detection tasks. RLVECO utilizes an edge sampling approach for exploiting features of the social graph via learning the context of each actor with respect to its neighboring actors.