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Attributing hacks with survival trend filtering

机译:通过生存趋势过滤将黑客归因于

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In this paper we describe an algorithm for estimating the provenance of hacks on websites. That is, given properties of sites and the temporal occurrence of attacks, we are able to attribute individual attacks to joint causes and vulnerabilities, as well as estimate the evolution of these vulnerabilities over time. Specifically, we use hazard regression with a time-varying additive hazard function parameterized in a generalized linear form. The activation coefficients on each feature are continuous-time functions over time. We formulate the problem of learning these functions as a constrained variational maximum likelihood estimation problem with total variation penalty and show that the optimal solution is a $0$th order spline (a piecewise constant function) with a finite number of adaptively chosen knots. This allows the inference problem to be solved efficiently and at scale by solving a finite dimensional optimization problem. Extensive experiments on real data sets show that our method significantly outperforms Cox’s proportional hazard model. We also conduct case studies and verify that the fitted functions of the features respond to real-life campaigns.
机译:在本文中,我们描述了一种用于估计网站上骇客出处的算法。也就是说,给定站点的属性和攻击的时间性,我们可以将单个攻击归因于共同的原因和漏洞,并估计这些漏洞随时间的演变。具体来说,我们将风险回归与以广义线性形式参数化的随时间变化的加性危害函数一起使用。每个功能上的激活系数都是随时间变化的连续时间函数。我们将学习这些函数的问题公式化为具有总变化惩罚的受约束的变分最大似然估计问题,并表明最优解是具有有限数量的自适应选择的结的$ 0 $阶样条(分段常数函数)。这可以通过解决有限维优化问题来有效,大规模地解决推理问题。在真实数据集上进行的大量实验表明,我们的方法明显优于Cox的比例风险模型。我们还将进行案例研究,并验证功能的装配功能是否能响应现实生活中的活动。

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