4.3 Article

JOINT ESTIMATION OF MULTIPLE HIGH-DIMENSIONAL PRECISION MATRICES

期刊

STATISTICA SINICA
卷 26, 期 2, 页码 445-464

出版社

STATISTICA SINICA
DOI: 10.5705/ss.2014.256

关键词

Constrained optimization; convergence rate; graph recovery; precision matrices; second-order cone programming; sparsity

资金

  1. NSF [DMS-1208982, DMS-1403708]
  2. NIH [R01 CA127334, R01 GM097505, UL1 TR001117]
  3. NSFC [11201298, 11322107]
  4. Program for Professor of Special Appointment (Eastern Scholar) at Shanghai Institutions of Higher Learning Shanghai Pujiang Program
  5. 973 Program [2015CBB56004]
  6. Shanghai Shuguang Program

向作者/读者索取更多资源

Motivated by analysis of gene expression data measured in different tissues or disease states, we consider joint estimation of multiple precision matrices to effectively utilize the partially shared graphical structures of the corresponding graphs. The procedure is based on a weighted constrained l(infinity)/l(1) minimization, which can be effectively implemented by a second-order cone programming. Compared to separate estimation methods, the proposed joint estimation method leads to estimators converging to the true precision matrices faster. Under certain regularity conditions, the proposed procedure leads to an exact graph structure recovery with a probability tending to 1. Simulation studies show that the proposed joint estimation methods outperform other methods in graph structure recovery. The method is illustrated through an analysis of an ovarian cancer gene expression data. The results indicate that the patients with poor prognostic subtype lack some important links among the genes in the apoptosis pathway.

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