| elastic.lpcr.regression {fdasrvf} | R Documentation |
This function identifies a logistic regression model with phase-variability using elastic pca
elastic.lpcr.regression( f, y, time, pca.method = "combined", no = 5, smooth_data = FALSE, sparam = 25 )
f |
matrix (N x M) of M functions with N samples |
y |
vector of size M lables |
time |
vector of size N describing the sample points |
pca.method |
string specifying pca method (options = "combined", "vert", or "horiz", default = "combined") |
no |
scalar specify number of principal components (default=5) |
smooth_data |
smooth data using box filter (default = F) |
sparam |
number of times to apply box filter (default = 25) |
Returns a lpcr object containing
alpha |
model intercept |
b |
regressor vector |
y |
label vector |
warp_data |
fdawarp object of aligned data |
pca |
pca object of principal components |
Loss |
logistic loss |
pca.method |
string specifying pca method used |
J. D. Tucker, J. R. Lewis, and A. Srivastava, “Elastic Functional Principal Component Regression,” Statistical Analysis and Data Mining, 10.1002/sam.11399, 2018.