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Online Instrumental Variable Regression with Applications to Online Linear System Identification

机译:在线乐器变量回归在线线性系统识别

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Instrumental variable regression (IVR) is a statistical technique utilized to recover unbiased estimators when there are errors in the independent variables. Estimator bias in learned time series models can yield poor performance in applications such as long-term prediction and filtering where the recursive use of the model results in the accumulation of propagated error. However, prior work addressed the IVR objective in the batch setting, where it is necessary to store the entire dataset in memory - an infeasible requirement in large dataset scenarios. In this work, we develop Online Instrumental Variable Regression (OIVR), an algorithm that is capable of updating the learned estimator with streaming data. We show that the online adaptation of IVR enjoys a no-regret performance guarantee with respect to the original batch setting by taking advantage of any no-regret online learning algorithm inside OIVR for the underlying update steps. We experimentally demonstrate the efficacy of our algorithm in combination with popular no-regret online algorithms for the task of learning predictive dynamical system models and on a prototypical econometrics instrumental variable regression problem.
机译:乐器变量回归(IVR)是在独立变量中存在错误时的统计技术,用于恢复非偏见的估计。学习时间序列模型中的估计偏差可以在诸如长期预测和过滤的应用中产生差的性能,其中模型的递归使用导致传播误差的累积。但是,在批处理设置中,先前的工作解决了IVR目标,在那里必须在内存中存储整个数据集 - 大型数据集方案中的一个不可行的要求。在这项工作中,我们开发了在线乐器变量回归(OIVR),该算法能够通过流数据更新学习估算器。我们认为IVR的在线适应通过利用OIVR中的任何无遗憾的在线学习算法来致力于原始批量设置,为底层更新步骤中的任何无遗憾的在线学习算法。我们通过实验展示了算法与流行无悔在线算法的效果,以便为学习预测动态系统模型和原型计量仪器变量回归问题的任务。

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