Kriukova Galyna, Panasiuk Oleksandra, Pereverzyev Sergei V, Tkachenko Pavlo
Johann Radon Institute for Computational and Applied Mathematics, Austrian Academy of Sciences, Altenbergerstrasse 69, 4040 Linz, Austria.
Johann Radon Institute for Computational and Applied Mathematics, Austrian Academy of Sciences, Altenbergerstrasse 69, 4040 Linz, Austria.
Neural Netw. 2016 Jan;73:26-35. doi: 10.1016/j.neunet.2015.08.012. Epub 2015 Oct 23.
Regularization schemes are frequently used for performing ranking tasks. This topic has been intensively studied in recent years. However, to be effective a regularization scheme should be equipped with a suitable strategy for choosing a regularization parameter. In the present study we discuss an approach, which is based on the idea of a linear combination of regularized rankers corresponding to different values of the regularization parameter. The coefficients of the linear combination are estimated by means of the so-called linear functional strategy. We provide a theoretical justification of the proposed approach and illustrate them by numerical experiments. Some of them are related with ranking the risk of nocturnal hypoglycemia of diabetes patients.
正则化方案经常用于执行排序任务。近年来,这个主题已经得到了深入研究。然而,要想有效,正则化方案应该配备一种合适的策略来选择正则化参数。在本研究中,我们讨论一种方法,该方法基于对应于正则化参数不同值的正则化排序器的线性组合的思想。线性组合的系数通过所谓的线性泛函策略来估计。我们为所提出的方法提供了理论依据,并通过数值实验对其进行了说明。其中一些实验与对糖尿病患者夜间低血糖风险进行排序有关。