Title :
A flexible modeling framework for coupled matrix and tensor factorizations
Author :
Acar, Esra ; Nilsson, Martin ; Saunders, Michael
Author_Institution :
Fac. of Sci., Univ. of Copenhagen, Frederiksberg, Denmark
Abstract :
Joint analysis of data from multiple sources has proved useful in many disciplines including metabolomics and social network analysis. However, data fusion remains a challenging task in need of data mining tools that can capture the underlying structures from multi-relational and heterogeneous data sources. In order to address this challenge, data fusion has been formulated as a coupled matrix and tensor factorization (CMTF) problem. Coupled factorization problems have commonly been solved using alternating methods and, recently, unconstrained all-at-once optimization algorithms. In this paper, unlike previous studies, in order to have a flexible modeling framework, we use a general-purpose optimization solver that solves for all factor matrices simultaneously and is capable of handling additional linear/nonlinear constraints with a nonlinear objective function. We formulate CMTF as a constrained optimization problem and develop accurate models more robust to overfactoring. The effectiveness of the proposed modeling/algorithmic framework is demonstrated on simulated and real data.
Keywords :
data mining; matrix decomposition; optimisation; sensor fusion; tensors; CMTF problem; all factor matrices; constrained optimization problem; coupled matrix and tensor factorization problem; data fusion; flexible modeling framework; general-purpose optimization solver; nonlinear objective function; unconstrained all-at-once optimization algorithms; Chemicals; Data integration; Data models; Joints; Nuclear magnetic resonance; Optimization; Tensile stress; SNOPT; data fusion; nonlinear constraints; nonlinear optimization; tensor factorizations;
Conference_Titel :
Signal Processing Conference (EUSIPCO), 2014 Proceedings of the 22nd European
Conference_Location :
Lisbon