32,544 research outputs found
UPS delivers optimal phase diagram in high-dimensional variable selection
Consider a linear model , . Here, ,
where both and are large, but . We model the rows of as i.i.d.
samples from , where is a
correlation matrix, which is unknown to us but is presumably sparse. The vector
is also unknown but has relatively few nonzero coordinates, and we are
interested in identifying these nonzeros. We propose the Univariate
Penalization Screeing (UPS) for variable selection. This is a screen and clean
method where we screen with univariate thresholding and clean with penalized
MLE. It has two important properties: sure screening and separable after
screening. These properties enable us to reduce the original regression problem
to many small-size regression problems that can be fitted separately. The UPS
is effective both in theory and in computation.Comment: Published in at http://dx.doi.org/10.1214/11-AOS947 the Annals of
Statistics (http://www.imstat.org/aos/) by the Institute of Mathematical
Statistics (http://www.imstat.org
Continuous time mean-variance portfolio selection with nonlinear wealth equations and random coefficients
This paper concerns the continuous time mean-variance portfolio selection
problem with a special nonlinear wealth equation. This nonlinear wealth
equation has nonsmooth random coefficients and the dual method developed in [7]
does not work. To apply the completion of squares technique, we introduce two
Riccati equations to cope with the positive and negative part of the wealth
process separately. We obtain the efficient portfolio strategy and efficient
frontier for this problem. Finally, we find the appropriate sub-derivative
claimed in [7] using convex duality method.Comment: arXiv admin note: text overlap with arXiv:1606.0548
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