شماره ركورد كنفرانس :
3976
عنوان مقاله :
Application of TuckFMIN for Robust Estimating Tucker3 Solutions
پديدآورندگان :
Shomali Zohreh Institute for Advanced Studies in Basic Sciences (IASBS), GavaZang , Kompany-Zareh Mohsen kompanym@iasbs.ac.ir Dalhousie University
كليدواژه :
Non , linear constrained optimization , Rank , deficiency , Multi , way analysis , Trilinearity , Tucker3 , Sparse core.
عنوان كنفرانس :
ششمين سمينار ملي دوسالانه كمومتريكس ايران
چكيده فارسي :
Despite MCR-FMIN [1] with trilinearity constraint which can be considered as a
two-way analysis of three-way data sets, TuckFMIN is pave the way for the multi-way
analysis of three-way data sets. TuckFMIN is an extended objective function
minimization to preserve the Tucker3 features. Starting from higher-order singular value
decomposition (HO-SVD)[2] loadings, TuckFMIN represents a new approach for
obtaining three proper rotation matrices for transforming the HO-SVD loadings to
physically and chemically meaningful solutions. In TuckFMIN, there are three rotation
matrices S, T and U that are responsible for converting physically meaningless
HO-SVD loadings (A, B, C) and non-sparse core of G to physically meaningful ones
( )and sparse core . For each rotation matrix a special objective function
(f(S), f(T) and f(U))is regarded that is defined based on constraints non-fulfillment.
FMIN is proposed for minimization of f(total), where f(total)=f(S)+f(T)+f(U). Every
objective function is defined basis on suitable constraints such as normalization,
non-negativity, trilinearity, sparsity, and etc [3]. For example f(S) is defined as:
. Trilinearity scalar function is defined because
of the trilinear structure of . This trilinear scalar function can be efficient for
obtaining robust convergence for full rank or rank-deficient data sets and decrease the
risk of converging to the local minimum. TuckFMIN can sparse HO-SVD core by
rotation of core elements using sparsity constraint. Simulated fluorescence data was
exemplified to evaluate the feasibility of proposed method. For sake of comparison
between different methods PARAFAC-ALS, HO-SVD and TuckFMIN are used. LOF
(lack of fit) from TuckFMIN modeling is always as same as LOF of HO-SVD and less
than LOF of the PARAFAC-ALS for noise free data sets. Despite the PARAFAC-ALS
decomposition, TuckFMIN has the best fitting regardless to rank-deficiency or levels of
noise . By means of simulation study, it is demonstrated that TuckFMIN with
trilinearity and sparsity constraints can be helpful for faster convergence and obtaining
the reproducible results.