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arxiv: 1504.08031 · v2 · pith:UCK7EULMnew · submitted 2015-04-29 · 🧮 math.ST · stat.ME· stat.TH

Selective inference with unknown variance via the square-root LASSO

classification 🧮 math.ST stat.MEstat.TH
keywords lassoestimatesinferenceknownlevelnoisesquare-rootcoefficients
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There has been much recent work on inference after model selection when the noise level is known, however, $\sigma$ is rarely known in practice and its estimation is difficult in high-dimensional settings. In this work we propose using the square-root LASSO (also known as the scaled LASSO) to perform selective inference for the coefficients and the noise level simultaneously. The square-root LASSO has the property that choosing a reasonable tuning parameter is scale-free, namely it does not depend on the noise level in the data. We provide valid p-values and confidence intervals for the coefficients after selection, and estimates for model specific variance. Our estimates perform better than other estimates of $\sigma^2$ in simulation.

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