网络监测中的自适应记忆学习和强化主动学习

Sarah Wassermann, Thibaut Cuvelier, Pavol Mulinka, P. Casas
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引用次数: 3

摘要

网络流量数据通常以快速数据流的形式到达;在线网络监测系统不断分析这些类型的流,随时间顺序收集测量值。在这些快速动态的环境中,持续动态学习是一种有效的学习策略,在这些环境中,概念漂移不断发生。在本文中,我们提出了基于流的机器学习的不同方法,能够使用监督学习技术动态分析网络流量流。我们解决了与基于流的机器学习和在线网络监控相关的两个主要挑战:(i)如何动态地学习和适应随时间变化的非平稳数据和模式,以及(ii)如何处理有限的基础事实或标记数据的可用性,以持续调整监督学习模型。我们介绍ADAM * RAL,两种基于流的机器学习方法来解决这些挑战。ADAM实现了多个基于流的机器学习模型,并依靠自适应记忆策略来动态调整系统学习记忆的大小以适应最新的数据分布,当检测到概念漂移时触发新的学习步骤。RAL实现了一种基于流的主动学习策略,以减少基于流的学习所需的标记数据量,动态决定最具信息量的样本以集成到持续学习方案中。使用强化学习循环,人工神经网络通过额外学习之前样本选择决策的优点来提高预测性能。我们专注于网络监控中一个特别具有挑战性的问题:随着时间的推移不断调整能够识别网络攻击的检测模型。通过不断学习和检测真实网络测量中的概念漂移,我们表明ADAM * RAL可以持续实现高检测精度,并限制在动态网络数据流上检测攻击所需的训练数据量。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
ADAM & RAL: Adaptive Memory Learning and Reinforcement Active Learning for Network Monitoring
Network-traffic data commonly arrives in the form of fast data streams; online network-monitoring systems continuously analyze these kinds of streams, sequentially collecting measurements over time. Continuous and dynamic learning is an effective learning strategy when operating in these fast and dynamic environments, where concept drifts constantly occur. In this paper, we propose different approaches for stream-based machine learning, able to analyze network-traffic streams on the fly, using supervised learning techniques. We address two major challenges associated to stream-based machine learning and online network monitoring: (i) how to dynamically learn from and adapt to non-stationary data and patterns changing over time, and (ii) how to deal with the limited availability of ground truth or labeled data to continuously tune a supervised learning model. We introduce ADAM * RAL, two stream-based machine-learning approaches to tackle these challenges. ADAM implements multiple stream-based machine-learning models and relies on an adaptive memory strategy to dynamically adapt the size of the system’s learning memory to the most recent data distribution, triggering new learning steps when concept drifts are detected. RAL implements a stream-based active-learning strategy to reduce the amount of labeled data needed for streambased learning, dynamically deciding on the most informative samples to integrate into the continuous learning scheme. Using a reinforcement learning loop, RAL improves prediction performance by additionally learning from the goodness of its previous sample-selection decisions. We focus on a particularly challenging problem in network monitoring: continuously tuning detection models able to recognize network attacks over time.By continuously learning from and detecting concept drifts within real network measurements, we show that ADAM * RAL can continuously achieve high detection accuracy and limit the amount of training data needed to detect attacks over dynamic network data streams.
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