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Efficient least angle regression for identification of linear-in-the-parameters models

机译:有效的最小角度回归用于参数线性模型的识别

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摘要

Least angle regression, as a promising model selection method, differentiates itself from conventional stepwise and stagewise methods, in that it is neither too greedy nor too slow. It is closely related to L1 norm optimization, which has the advantage of low prediction variance through sacrificing part of model bias property in order to enhance model generalization capability. In this paper, we propose an efficient least angle regression algorithm for model selection for a large class of linear-in-the-parameters models with the purpose of accelerating the model selection process. The entire algorithm works completely in a recursive manner, where the correlations between model terms and residuals, the evolving directions and other pertinent variables are derived explicitly and updated successively at every subset selection step. The model coefficients are only computed when the algorithm finishes. The direct involvement of matrix inversions is thereby relieved. A detailed computational complexity analysis indicates that the proposed algorithm possesses significant computational efficiency, compared with the original approach where the well-known efficient Cholesky decomposition is involved in solving least angle regression. Three artificial and real-world examples are employed to demonstrate the effectiveness, efficiency and numerical stability of the proposed algorithm.
机译:最小角度回归作为一种有前途的模型选择方法,与传统的逐步和逐步方法有所不同,因为它既不贪心又不太慢。它与L1范数优化密切相关,它具有通过牺牲部分模型偏差属性来降低模型预测能力的优势,以增强模型的泛化能力。在本文中,我们提出了一种有效的最小角度回归算法,用于大型参数线性模型的模型选择,以加速模型选择过程。整个算法以递归方式完全工作,其中模型项与残差,演化方向及其他相关变量之间的相关性被明确导出,并在每个子集选择步骤中相继更新。仅在算法完成时才计算模型系数。从而消除了矩阵求逆的直接参与。详细的计算复杂度分析表明,与原始方法相比,该算法具有显着的计算效率,在原始方法中,众所周知的高效Cholesky分解参与了最小角度回归的求解。通过三个人工和真实的例子来证明所提算法的有效性,效率和数值稳定性。

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