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Accurate Inference for Adaptive Linear Models

机译:自适应线性模型的准确推断

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Estimators computed from adaptively collected data do not behave like their non-adaptive brethren.Rather, the sequential dependence of the collection policy can lead to severe distributional biases that persist even in the infinite data limit. We develop a general method – $mathbf{W}$-decorrelation – for transforming the bias of adaptive linear regression estimators into variance. The method uses only coarse-grained information about the data collection policy and does not need access to propensity scores or exact knowledge of the policy.We bound the finite-sample bias and variance of the $mathbf{W}$-estimator and develop asymptotically correct confidence intervals based on a novel martingale central limit theorem. We then demonstrate the empirical benefits of the generic $mathbf{W}$-decorrelation procedure in two different adaptive data settings: the multi-armed bandit and the autoregressive time series.
机译:根据自适应收集的数据计算出的估算器的行为不像其非自适应弟兄,而是由于收集策略的顺序依赖性可能导致严重的分配偏差,即使在无限数据限制下也仍然存在。我们开发了一种通用方法– $ mathbf {W} $-decorrelation,将自适应线性回归估计量的偏差转换为方差。该方法仅使用有关数据收集策略的粗粒度信息,不需要访问倾向得分或策略的确切知识。我们对$ mathbf {W} $-估计量的有限样本偏差和方差进行约束,并开发基于新的mar中心极限定理渐近校正置信区间。然后,我们在两种不同的自适应数据设置中证明了通用$ mathbf {W} $-去相关过程的经验好处:多臂匪徒和自回归时间序列。

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