Least Squares Loss Function
Solver for the least squares monotone regression problem with optional weights.
lsSolver(z, a, extra)
z
: Vector containing observed response
a
: Matrix with active constraints
extra
: List with element y
containing the observed response vector and weights
with optional observation weights
This function is called internally in activeSet
by setting mySolver = lsSolver
.
x: Vector containing the fitted values
lbd: Vector with Lagrange multipliers
f: Value of the target function
gx: Gradient at point x
activeSet
##Fitting isotone regression using active set set.seed(12345) y <- rnorm(9) ##response values w <- rep(1,9) ##unit weights btota <- cbind(1:8, 2:9) ##Matrix defining isotonicity (total order) fit.ls <- activeSet(btota, lsSolver, weights = w, y = y)