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No-Regret Prediction in Marginally Stable Systems

机译:在边缘稳定的系统中没有遗憾预测

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We consider the problem of online prediction in a marginally stable linear dynamical system subject to bounded adversarial or (non-isotropic) stochastic perturbations. This poses two challenges. Firstly, the system is in general unidentifiable, so recent and classical results on parameter recovery do not apply. Secondly, because we allow the system to be marginally stable, the state can grow polynomially with time; this causes standard regret bounds in online convex optimization to be vacuous. In spite of these challenges, we show that the online least-squares algorithm achieves sublinear regret (improvable to polylogarithmic in the stochastic setting), with polynomial dependence on the system’s parameters. This requires a refined regret analysis, including a structural lemma showing the current state of the system to be a small linear combination of past states, even if the state grows polynomially. By applying our techniques to learning an autoregressive filter, we also achieve logarithmic regret in the partially observed setting under Gaussian noise, with polynomial dependence on the memory of the associated Kalman filter.
机译:我们考虑受偏心的对抗性或(非各向同性)随机扰动的边际稳定的线性动态系统中的在线预测问题。这带来了两个挑战。首先,该系统一般是无法识别的,所以最近和古典的参数恢复结果不适用。其次,由于我们允许系统略微稳定,所以州可以随着时间的推移而生长多项;这导致在线凸优化中的标准遗憾界限可供空。尽管有这些挑战,我们表明在线最小二乘算法实现了载体后悔(可在随机设置中可改善的转积率),具有多项式依赖于系统的参数。这需要精细的遗憾分析,包括表明系统的当前状态的结构引理是过去状态的小线性组合,即使状态增加多项。通过应用我们的技术来学习自回归过滤器,我们还在高斯噪声下的部分观察到的设置中实现了对数遗憾,多项式依赖于相关卡尔曼滤波器的存储器。

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