Using Deep Generative Models to Boost Forecasting: A Phishing Prediction Case Study

Syed Hasan Amin Mahmood, A. Abbasi
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引用次数: 1

Abstract

Time series predictions are important for various application domains. However, effective forecasting can be challenging in noisy contexts devoid of time series data encompassing stationarity, cyclicality, completeness, and non-sparseness. Cyber-security is a good example of such context. In organizational security settings, predicting time series related to emerging attacks could enhance cyber threat intelligence, resulting in timely and actionable insights at the operational, tactical, and strategic levels. In order to explore this gap, we propose a deep generative model-based framework for time series forecasting in noisy data environments. The proposed framework incorporates a novel ensembling strategy where generative adversarial networks and recurrent variational autoencoders are leveraged in unison with base predictors for enhanced regularization of time series predictive models. The framework is extensible, supporting different model combinations and analytical or iterative model fusion strategies. Using a test bed encompassing 10 years of weekly phishing attack volume data from 5 organizations in the technology, financial services, and social networking sectors, we show that the framework can boost predictive power for various standard time series models. Additional results reveal that the framework outperforms generative data augmentation approaches designed to enrich the input time series data matrices. Collectively, our findings suggest that utilizing generative models in more robust end-to-end setup can improve prediction in cyber threat intelligence contexts, as well as related problems involving challenging time series data.
使用深度生成模型促进预测:一个网络钓鱼预测案例研究
时间序列预测对于各种应用领域都很重要。然而,在缺乏包含平稳性、周期性、完整性和非稀疏性的时间序列数据的嘈杂环境中,有效的预测是具有挑战性的。网络安全就是一个很好的例子。在组织安全设置中,预测与新出现的攻击相关的时间序列可以增强网络威胁情报,从而在操作、战术和战略层面上获得及时和可操作的见解。为了探索这一差距,我们提出了一个基于深度生成模型的框架,用于嘈杂数据环境下的时间序列预测。提出的框架结合了一种新的集成策略,其中生成对抗网络和循环变分自编码器与基本预测器一起用于增强时间序列预测模型的正则化。框架是可扩展的,支持不同的模型组合和分析或迭代模型融合策略。使用包含来自技术、金融服务和社交网络领域的5个组织10年来每周网络钓鱼攻击量数据的测试平台,我们表明该框架可以提高各种标准时间序列模型的预测能力。其他结果表明,该框架优于生成数据增强方法,旨在丰富输入时间序列数据矩阵。总的来说,我们的研究结果表明,在更强大的端到端设置中使用生成模型可以改善网络威胁情报背景下的预测,以及涉及具有挑战性的时间序列数据的相关问题。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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