The content discusses the development of an Edge-Aware Graph Autoencoder (EdgeGAE) model for solving Traveling Salesman Problems (TSPs) with various numbers of cities. The model is designed to learn from scale-imbalanced samples and outperforms state-of-the-art approaches in solving TSPs with different scales. The proposed methodology involves a residual gated encoder to learn latent edge embeddings and an edge-centered decoder for link predictions. An active sampling strategy is introduced to improve generalization capability in large-scale scenarios, and a benchmark dataset comprising 50,000 TSP instances ranging from 50 to 500 cities is generated for evaluation.
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