Equivalence of state equations from different methods in High-dimensional Regression
State equations (SEs) were firstly introduced in the approximate message passing (AMP) to describe the mean square error (MSE) in compressed sensing. Since then a set of state equations have appeared in studies of logistic regression, robust estimator and other high-dimensional statistics problems....
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Zusammenfassung: | State equations (SEs) were firstly introduced in the approximate message
passing (AMP) to describe the mean square error (MSE) in compressed sensing.
Since then a set of state equations have appeared in studies of logistic
regression, robust estimator and other high-dimensional statistics problems.
Recently, a convex Gaussian min-max theorem (CGMT) approach was proposed to
study high-dimensional statistic problems accompanying with another set of
different state equations. This paper provides a uniform viewpoint on these
methods and shows the equivalence of their reduction forms, which causes that
the resulting SEs are essentially equivalent and can be converted into the same
expression through parameter transformations. Combining these results, we show
that these different state equations are derived from several equivalent
reduction forms. We believe that this equivalence will shed light on
discovering a deeper structure in high-dimensional statistics. |
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DOI: | 10.48550/arxiv.2209.12156 |