Strong consistency of an estimator by the truncated singular value decomposition for an errors-in-variables regression model with collinearity

Kensuke Aishima
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Abstract

In this paper, we prove strong consistency of an estimator by the truncated singular value decomposition for a multivariate errors-in-variables linear regression model with collinearity. This result is an extension of Gleser's proof of the strong consistency of total least squares solutions to the case with modern rank constraints. While the usual discussion of consistency in the absence of solution uniqueness deals with the minimal norm solution, the contribution of this study is to develop a theory that shows the strong consistency of a set of solutions. The proof is based on properties of orthogonal projections, specifically properties of the Rayleigh-Ritz procedure for computing eigenvalues. This makes it suitable for targeting problems where some row vectors of the matrices do not contain noise. Therefore, this paper gives a proof for the regression model with the above condition on the row vectors, resulting in a natural generalization of the strong consistency for the standard TLS estimator.
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共线性误差变量回归模型的截断奇异值分解估计量的强相合性
本文利用截断奇异值分解证明了一类具有共线性的多元误差变量线性回归模型的估计量的强相合性。这个结果是Gleser对具有现代秩约束的情况的总最小二乘解的强一致性证明的推广。虽然通常讨论解不存在唯一性时的一致性处理的是最小范数解,但本研究的贡献是发展了一个理论,表明一组解的强一致性。证明是基于正交投影的性质,特别是计算特征值的瑞利-里兹过程的性质。这使得它适合于定位矩阵的某些行向量不包含噪声的问题。因此,本文给出了具有上述条件的回归模型在行向量上的证明,从而对标准TLS估计量的强相合性进行了自然推广。
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