Quasi-Likelihood and/or Robust Estimation in High Dimensions
Abstract
We consider the theory for the high-dimensional generalized linear model with the Lasso. After a short review on theoretical results in literature, we present an extension of the oracle results to the case of quasi-likelihood loss. We prove bounds for the prediction error and 1-error. The results are derived under fourth moment conditions on the error distribution. The case of robust loss is also given. We moreover show that under an irrepresentable condition, the 1-penalized quasi-likelihood estimator has no false positives.
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