Simultaneous Inference in Non-Sparse High-Dimensional Linear Models
Inference and prediction under the sparsity assumption have been a hot research topic in recent years. However, in practice, the sparsity assumption is difficult to test, and more importantly can usually be violated. In this paper, to study hypothesis test of any group of parameters under non-sparse...
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Main Authors | , , |
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Format | Journal Article |
Language | English |
Published |
17.10.2022
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Subjects | |
Online Access | Get full text |
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Summary: | Inference and prediction under the sparsity assumption have been a hot
research topic in recent years. However, in practice, the sparsity assumption
is difficult to test, and more importantly can usually be violated. In this
paper, to study hypothesis test of any group of parameters under non-sparse
high-dimensional linear models, we transform the null hypothesis to a testable
moment condition and then use the self-normalization structure to construct
moment test statistics under one-sample and two-sample cases, respectively.
Compared to the one-sample case, the two-sample additionally requires a
convolution condition. It is worth noticing that these test statistics contain
Modified Dantzig Selector, which simultaneously estimates model parameters and
error variance without sparse assumption. Specifically, our method can be
extended to heavy tailed distributions of error for its robustness. On very
mild conditions, we show that the probability of Type I error is asymptotically
equal to the nominal level {\alpha} and the probability of Type II error is
asymptotically 0. Numerical experiments indicate that our proposed method has
good finite-sample performance. |
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DOI: | 10.48550/arxiv.2210.09019 |