SpiceFP - Sparse Method to Identify Joint Effects of Functional Predictors
A set of functions allowing to implement the 'SpiceFP'
approach which is iterative. It involves transformation of
functional predictors into several candidate explanatory
matrices (based on contingency tables), to which relative edge
matrices with contiguity constraints are associated.
Generalized Fused Lasso regression are performed in order to
identify the best candidate matrix, the best class intervals
and related coefficients at each iteration. The approach is
stopped when the maximal number of iterations is reached or
when retained coefficients are zeros. Supplementary functions
allow to get coefficients of any candidate matrix or mean of
coefficients of many candidates.