We propose a novel broadcasting idea to model the nonlinearity in tensor regression non-parametrically. Unlike existing non-parametric tensor regression models, the resulting model strikes a good balance between flexibility and interpretability. A penalized estimation and corresponding algorithm are proposed. Our theoretical investigation, which allows the dimensions of the tensor covariate to diverge, indicates that the proposed estimation enjoys a desirable convergence rate. We also provide a minimax lower bound, which characterizes the optimality of the proposed estimator in a wide range of scenarios. Numerical experiments are conducted to confirm the theoretical finding and show that the proposed model has advantages over existing linear counterparts.
翻译:我们提出了一个新型的广播理念,以模拟在单次回归中的非线性非参数回归。与现有的非参数回归模型不同,所产生的模型在灵活性和可解释性之间保持了良好的平衡。提出了一种受罚的估计和相应的算法。我们的理论调查允许对单次共变的方方面面进行差异,表明拟议的估算具有理想的趋同率。我们还提供了一个微小的下限,这是拟议估算者在各种情景中最优性的特点。进行了数字实验,以证实理论调查结果,并表明拟议的模型比现有的线性对应方具有优势。