Inference for Low-rank Models without Estimating the Rank
This paper studies the inference about linear functionals of high-dimensional low-rank matrices. While most existing inference methods would require consistent estimation of the true rank, our procedure is robust to rank misspecification, making it a promising approach in applications where rank est...
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Zusammenfassung: | This paper studies the inference about linear functionals of high-dimensional
low-rank matrices. While most existing inference methods would require
consistent estimation of the true rank, our procedure is robust to rank
misspecification, making it a promising approach in applications where rank
estimation can be unreliable. We estimate the low-rank spaces using
pre-specified weighting matrices, known as diversified projections. A novel
statistical insight is that, unlike the usual statistical wisdom that
overfitting mainly introduces additional variances, the over-estimated low-rank
space also gives rise to a non-negligible bias due to an implicit ridge-type
regularization. We develop a new inference procedure and show that the central
limit theorem holds as long as the pre-specified rank is no smaller than the
true rank. In one of our applications, we study multiple testing with
incomplete data in the presence of confounding factors and show that our method
remains valid as long as the number of controlled confounding factors is at
least as large as the true number, even when no confounding factors are
present. |
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DOI: | 10.48550/arxiv.2311.16440 |