Hilbert-Schmidt Independence Criterion (HSIC) has recently been used in the field of single-index models to estimate the directions. Compared with some other well-established methods, it requires relatively weaker conditions. However, its performance has not yet been studied in the high-dimensional scenario, where the number of covariates is much larger than the sample size. In this article, we propose a new efficient sparse estimate in HSIC based single-index model. This new method estimates the subspace spanned by the linear combinations of the covariates directly and performs variable selection simultaneously. Due to the non-convexity of the objective function, we use a majorize-minimize approach together with the linearized alternating direction method of multipliers algorithm to solve the optimization problem. The algorithm does not involve the inverse of the covariance matrix and therefore can handle the large p small n scenario naturally. Through extensive simulation studies and a real data analysis, we show our proposal is efficient and effective in the high-dimensional setting. The Matlab codes for this method are available online.
翻译:Hilbert-Schmidt 独立标准(HISIC)最近用于单指数模型领域来估计方向。 与其他一些公认的方法相比, 它需要相对较低的条件。 但是, 在高维假设中还没有研究它的性能, 共变数比样本大小大得多。 在本条中, 我们提议在基于 HISIC 的单指数模型中采用新的高效稀释估计值。 这个新方法直接估计共变的线性组合所覆盖的子空间, 并同时进行变量选择。 由于目标函数不均匀, 我们使用主要最小化方法以及倍数算法的线性交替方向方法来解决优化问题。 算法并不涉及共变矩阵的反面, 因此可以自然处理大型的单数值。 通过广泛的模拟研究和真实的数据分析, 我们展示了我们的建议在高维环境中是高效有效的。 用于此方法的马特拉布代码可以在线查阅 。