{"id":580879,"date":"2019-04-23T16:33:07","date_gmt":"2019-04-23T23:33:07","guid":{"rendered":"https:\/\/www.microsoft.com\/en-us\/research\/?post_type=msr-research-item&p=580879"},"modified":"2019-04-24T18:46:55","modified_gmt":"2019-04-25T01:46:55","slug":"accurate-inference-for-adaptive-linear-models","status":"publish","type":"msr-research-item","link":"https:\/\/www.microsoft.com\/en-us\/research\/publication\/accurate-inference-for-adaptive-linear-models\/","title":{"rendered":"Accurate Inference for Adaptive Linear Models"},"content":{"rendered":"
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 — 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 W-decorrelation and develop asymptotically correct confidence intervals based on a novel martingale central limit theorem. We then demonstrate the empirical benefits of the generic W-decorrelation procedure in two different adaptive data settings: the multi-armed bandit and the autoregressive time series settings.<\/p>\n","protected":false},"excerpt":{"rendered":"
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 — W-decorrelation — for transforming the bias of adaptive linear regression estimators into variance. The 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