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isotone (version 1.0-1)

aSolver: Asymmetric Least Squares

Description

Minimizes Efron's asymmetric least squares regression.

Usage

aSolver(z, a, extra)

Arguments

z
Vector containing observed response
a
Matrix with active constraints
extra
List with element y containing the observed response vector, weights with optional observation weights, weight aw for y > x, and weight bw for y

Value

  • xVector containing the fitted values
  • lbdVector with Lagrange multipliers
  • fValue of the target function
  • gxGradient at point x

Details

This function is called internally in activeSet by setting mySolver = aSolver.

References

Efron, B. (1991). Regression percentiles using asymmetric squared error loss. Statistica Sinica, 1, 93-125.

See Also

activeSet

Examples

Run this code
##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.asy <- activeSet(btota, aSolver, weights = w, y = y, aw = 0.3, bw = 0.5)

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