DeepLink: A Novel Link Prediction Framework based on Deep Learning
Mohammad Mehdi Keikha, Maseud Rahgozar, Masoud Asadpour

TL;DR
DeepLink introduces a deep learning-based framework that automatically combines structural and content information for link prediction, outperforming existing methods on real social network datasets.
Contribution
The paper presents a novel deep learning framework for link prediction that automatically extracts features from structural and content data, addressing scalability and heterogeneity issues.
Findings
DeepLink outperforms several existing link prediction methods.
The framework effectively integrates structural and content information.
It demonstrates strong results on Telegram and irBlogs datasets.
Abstract
Recently, link prediction has attracted more attentions from various disciplines such as computer science, bioinformatics and economics. In this problem, unknown links between nodes are discovered based on numerous information such as network topology, profile information and user generated contents. Most of the previous researchers have focused on the structural features of the networks. While the recent researches indicate that contextual information can change the network topology. Although, there are number of valuable researches which combine structural and content information, but they face with the scalability issue due to feature engineering. Because, majority of the extracted features are obtained by a supervised or semi supervised algorithm. Moreover, the existing features are not general enough to indicate good performance on different networks with heterogeneous structures.…
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