作者
Jared Knofczynski, Ramakrishnan Durairajan, Walter Willinger
发表日期
2022/6/8
期刊
IEEE Journal on Selected Areas in Communications
卷号
40
期号
8
页码范围
2456-2473
出版商
IEEE
简介
The application of machine learning (ML) to mitigate network-related problems poses significant challenges for researchers and operators alike. For one, there is a general lack of labeled training data in networking, and labeling techniques popular in other domains are ill-suited due to the scarcity of operators’ domain expertise. Second, network problems are typically multi-tasked in nature, requiring multiple ML models (one per task) and resulting in multiplicative increases in training times as the number of tasks increases. Third, the adoption of ML by network operators hinges on the models’ ability to provide basic reasoning about their decision-making procedures. To address these challenges, we propose ARISE, a multi-task weak supervision framework for network measurements. ARISE uses weak supervision-based data programming to label network data at scale and applies learning paradigms such as multi …
引用总数
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J Knofczynski, R Durairajan, W Willinger - IEEE Journal on Selected Areas in Communications, 2022