Iterative log thresholding
Dmitry Malioutov, Aleksandr Aravkin
ICASSP 2014
Statistical factor models based on principal component analysis (PCA) have been widely used to reduce the dimensionality of financial time-series. We investigate the sensitivity of PCA to peculiarities of financial data, such as heavy tails and asymmetry and suggest to use alternatives to PCA. We investigate a recent reformulation of principal components as a search for projections which allows to go beyond the squared-error in the objective. We suggest to use a robust formulation for PCA and also a version of PCA with conditional value at risk (cVaR) as the error metric to drive the low-rank approximation. cVaR has received considerable attention in risk management as a coherent replacement of Value at Risk. We describe a convex formulation for both robust PCA and cVaR-PCA and apply them on an computational example with US equities. © 2013 IEEE.
Dmitry Malioutov, Aleksandr Aravkin
ICASSP 2014
Dmitry Malioutov, Aycan A. Corum, et al.
IEEE JSTSP
Dmitry Malioutov, Tianchi Chen, et al.
Molecular and Cellular Proteomics
Insu Han, Dmitry Malioutov, et al.
SIAM Journal on Scientific Computing