Constructing Confidence Intervals for the Signals in Sparse Phase Retrieval

09/26/2020
by   Yisha Yao, et al.
0

In this paper, we provide a general methodology to draw statistical inferences on individual signal coordinates or linear combinations of them in sparse phase retrieval. Given an initial estimator for the targeting parameter (some simple function of the signal), which is generated by some existing algorithm, we can modify it in a way that the modified version is asymptotically normal and unbiased. Then confidence intervals and hypothesis testings can be constructed based on this asymptotic normality. For conciseness, we focus on confidence intervals in this work, while a similar procedure can be adopted for hypothesis testings. Under some mild assumptions on the signal and sample size, we establish theoretical guarantees for the proposed method. These assumptions are generally weak in the sense that the dimension could exceed the sample size and many non-zero small coordinates are allowed. Furthermore, theoretical analysis reveals that the modified estimators for individual coordinates have uniformly bounded variance, and hence simultaneous interval estimation is possible. Numerical simulations in a wide range of settings are supportive of our theoretical results.

READ FULL TEXT

page 1

page 2

page 3

page 4

research
02/07/2022

Valid confidence intervals for μ, σ when there is only one observation available

Portnoy (2019) considered the problem of constructing an optimal confide...
research
07/11/2019

Statistical inference for piecewise normal distributions and stochastic variational inequalities

In this paper we first provide a method to compute confidence intervals ...
research
11/21/2020

Robust statistical inference for the matched net benefit and the matched win ratio using prioritized composite endpoints

As alternatives to the time-to-first-event analysis of composite endpoin...
research
09/26/2013

Estimating Undirected Graphs Under Weak Assumptions

We consider the problem of providing nonparametric confidence guarantees...
research
08/04/2023

Distributional Theory and Statistical Inference for Linear Functions of Eigenvectors with Small Eigengaps

Spectral methods have myriad applications in high-dimensional statistics...
research
07/08/2021

Asymptotic normality of robust M-estimators with convex penalty

This paper develops asymptotic normality results for individual coordina...
research
08/02/2019

Heterogeneous Endogenous Effects in Networks

This paper proposes a new method to identify leaders and followers in a ...

Please sign up or login with your details

Forgot password? Click here to reset