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LPCNN: convolutional neural network for link prediction based on network structured features
First-order heuristics like common neighbors and preferred attachment only contain one-hop neighbors of two chosen nodes. [...]high-order heuristic methods frequently outperform low-order heuristic approaches, although they have a higher computational cost. Because numerous heuristic techniques have...
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Published in: | Telkomnika 2022-12, Vol.20 (6), p.1214-1224 |
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creator | Alzubaidi, Asia Mahdi Naser Alsaadi, Elham Mohammed Thabit A. |
description | First-order heuristics like common neighbors and preferred attachment only contain one-hop neighbors of two chosen nodes. [...]high-order heuristic methods frequently outperform low-order heuristic approaches, although they have a higher computational cost. Because numerous heuristic techniques have been developed to handle various graphs, finding a suitable heuristic approach becomes a difficult task [10]. [...]embedding algorithms that can learn node features from network topology have been employed to resolve the LP issue; notable approaches in this line include matrix factorization and stochastic block modeling (SBM) [12]. Predicting links by analyzing common neighbors (PLACN) a methodology based on convolutional neural networks is introduced and compared their technique to the state-of-the-art method, achieving 96% area under curve (AUC) in the benchmark [18]. Because of its accuracy, a subgraph technique known as Weisfeiler-Lehman neural machine (WLNM) was recently designated as a state-of-the-art link prediction method [19]. |
doi_str_mv | 10.12928/telkomnika.v20i6.22990 |
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subjects | Accuracy Algorithms Artificial neural networks Decision trees Deep learning Graph theory Heuristic Heuristic methods Machine learning Network analysis Network topologies Neural networks Proteins Social network analysis Social networks Support vector machines |
title | LPCNN: convolutional neural network for link prediction based on network structured features |
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