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arxiv: 1407.4184 · v1 · pith:TSXG3PKAnew · submitted 2014-07-16 · 📊 stat.ME

Inference for biased models: a quasi-instrumental variable approach

classification 📊 stat.ME
keywords modelsbiasedvariablevariablesestimationexactlymethodprediction
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For linear regression models who are not exactly sparse in the sense that the coefficients of the insignificant variables are not exactly zero, the working models obtained by a variable selection are often biased. Even in sparse cases, after a variable selection, when some significant variables are missing, the working models are biased as well. Thus, under such situations, root-n consistent estimation and accurate prediction could not be expected. In this paper, a novel remodelling method is proposed to produce an unbiased model when quasi-instrumental variables are introduced. The root-n estimation consistency and the asymptotic normality can be achieved, and the prediction accuracy can be promoted as well. The performance of the new method is examined through simulation studies.

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