A Graph Neural Network Approach for Identification of Influencers and Micro-Influencers in a Social Network : *Classifying influencers from non-influencers using GNN and GCN | IEEE Conference Publication | IEEE Xplore

A Graph Neural Network Approach for Identification of Influencers and Micro-Influencers in a Social Network : *Classifying influencers from non-influencers using GNN and GCN


Abstract:

Targeting potential influencers for ad campaigns is one of the main challenges in social media marketing. This paper aims to incorporate Artificial Intelligence to segreg...Show More

Abstract:

Targeting potential influencers for ad campaigns is one of the main challenges in social media marketing. This paper aims to incorporate Artificial Intelligence to segregate influencers from non-influencers. The target groups in focus are potential influencers. The authors build two different kinds of Graph Neural Networks, one is simple Graph Neural Network and the other is Graph Convolutional Network for node classification. A simple GNN model provides a convenient way of expressing node level, edge level and graph level prediction tasks. GCN classifies nodes based on their features. They compare the accuracy of these two models and propose the best model for social media targeting for ad campaigns, influencer detection. Additional research on Graphical models like Linear Threshold Model is being implemented to understand the importance of AI in detecting micro-influencers. Technology stack: Python and tensorflow.
Date of Conference: 19-21 April 2023
Date Added to IEEE Xplore: 07 July 2023
ISBN Information:
Conference Location: Bangalore, India
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