Realizing Personalized and Adaptive Inference of AS Paths With a Generative and Measurable Process
In the global Internet, understanding paths between autonomous systems (ASes) is valuable for improving the Internet routing system and optimizing various applications. However, due to the business and privacy concerns, only a small portion of paths are disclosed. Moreover, limited by the measuremen...
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Veröffentlicht in: | IEEE/ACM transactions on networking 2024-12, p.1-16 |
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Sprache: | eng |
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Zusammenfassung: | In the global Internet, understanding paths between autonomous systems (ASes) is valuable for improving the Internet routing system and optimizing various applications. However, due to the business and privacy concerns, only a small portion of paths are disclosed. Moreover, limited by the measurement resources, obtaining paths between any two ASes is impossible. Thus, path inference becomes necessary. Recent work proposes training individual model for each AS to infer paths, but it lacks personalization as it uses a shared approach and data for arbitrary ASes. Moreover, training models from scratch for all the ASes is time-consuming and resource-intensive. This paper introduces Personalized and Adaptive Generative Measurable Path Inference (PA-GMPI), a prefix-grained path inference process. PA-GMPI is capable of achieving superior performance and faster model training by fully leveraging the exclusive information of each AS. These improvements come from a personalized path generator, a 3-layer graph kernel based adaptive training warm-starter, and a real-world walks based AS representation learner. In evaluation, PA-GMPI significantly outperforms the state-of-the-art method, achieving a maximal accuracy improvement of 28.72% and ESR (exact same ratio) improvement of 49.95%. Furthermore, PA-GMPI achieves an average reduction of 20.21% in training resource consumption across over two thousand training sessions, using vantage ASes from five snapshots, which included 439 distinct ASes. |
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ISSN: | 1063-6692 1558-2566 |
DOI: | 10.1109/TNET.2024.3506156 |