The fused lasso is an important method for signal processing when the hidden signals are sparse and blocky. It is often used in combination with the squared loss function. However, the squared loss is not suitable for heavy tail error distributions nor is robust against outliers which arise often in practice. The least absolute deviations (LAD) loss provides a robust alternative to the squared loss. In this paper, we study the asymptotic properties of the fused lasso estimator with the LAD loss for signal approximation. We refer to this estimator as the LAD fused lasso signal approximator, or LAD-FLSA. We investigate the estimation consistency properties of the LAD-FLSA and provide sufficient conditions under which the LAD-FLSA is sign consistent. We also construct an unbiased estimator for the degrees of freedom of the LAD-FLSA for any given tuning parameters. Both simulation studies and real data analysis are conducted to illustrate the performance of the LAD-FLSA and the effect of the unbiased estimator of the degrees of freedom.
翻译:在隐藏信号稀少和阻塞的情况下,引信弧索是处理信号的一个重要方法,它通常与平方损失功能结合使用。然而,平方损失不适合严重尾部错误分布,也不利于实际中经常出现的外部线。最小绝对偏差(LAD)损失为平方损失提供了有力的替代物。在本文中,我们研究了与LAD损失相联的Lasso估计仪的无症状特性,以进行信号近似。我们将此估计器称为LAD引信lasso信号近似器,或LAD-FLSA。我们调查了LAD-FSA的一致性能,并为LAD-FSA的签名提供了充分条件。我们还为LAD-FLSA的任何调控参数的自由度建立了一个公正的估计器。我们进行了模拟研究和真实数据分析,以说明LAD-FSA的性能和自由度的无偏直度测量器的效果。