Back To Index Previous Article Next Article Full Text

Statistica Sinica 29 (2019), 961-982

AN ASSEMBLY AND DECOMPOSITION APPROACH
FOR CONSTRUCTING SEPARABLE MINORIZING
FUNCTIONS IN A CLASS OF MM ALGORITHMS
Guo-Liang Tian, Xi-Fen Huang and Jinfeng Xu
Southern University of Science and Technology,
Yunnan Normal University and
The University of Hong Kong

Abstract: The minorization–maximization (MM) principle provides a powerful tool for optimization in statistical applications. A challenging and subjective issue in developing an MM algorithm is to construct an appropriate minorizing function. For numerical convenience, our (AD) approach to constructing the minorizing function as the sum of separable univariate functions yields general class of MM algorithms. We employ the assembly technique (A-technique) and the decomposition technique (D-technique). The A-technique introduces a bank of complemental assembly functions which are often the building blocks of various MM algorithms. The D-technique decomposes the objective function into three parts and separately minorizes them. We illustrate the utility of the proposed approach in multiple applications. Numerical experiments demonstrate its advantages.

Key words and phrases: Case II interval censored data, complemental assembly, compound zero-inflated, transmission tomography, truncation.

Back To Index Previous Article Next Article Full Text