gpLsp {lessSEM}R Documentation

gpLsp

Description

Implements lsp regularization for general purpose optimization problems. The penalty function is given by:

Usage

gpLsp(
  par,
  fn,
  gr = NULL,
  ...,
  regularized,
  lambdas,
  thetas,
  method = "glmnet",
  control = lessSEM::controlGlmnet()
)

Arguments

par

labeled vector with starting values

fn

R function which takes the parameters AND their labels as input and returns the fit value (a single value)

gr

R function which takes the parameters AND their labels as input and returns the gradients of the objective function. If set to NULL, numDeriv will be used to approximate the gradients

...

additional arguments passed to fn and gr

regularized

vector with names of parameters which are to be regularized.

lambdas

numeric vector: values for the tuning parameter lambda

thetas

numeric vector: values for the tuning parameter theta

method

which optimizer should be used? Currently implemented are ista and glmnet.

control

used to control the optimizer. This element is generated with the controlIsta and controlGlmnet functions. See ?controlIsta and ?controlGlmnet for more details.

Details

The interface is similar to that of optim. Users have to supply a vector with starting values (important: This vector must have labels) and a fitting function. This fitting functions must take a labeled vector with parameter values as first argument. The remaining arguments are passed with the ... argument. This is similar to optim.

The gradient function gr is optional. If set to NULL, the numDeriv package will be used to approximate the gradients. Supplying a gradient function can result in considerable speed improvements.

lsp regularization:

For more details on GLMNET, see:

For more details on ISTA, see:

Value

Object of class gpRegularized

Examples

library(lessSEM)
set.seed(123)

# first, we simulate data for our
# linear regression.
N <- 100 # number of persons
p <- 10 # number of predictors
X <- matrix(rnorm(N*p),	nrow = N, ncol = p) # design matrix
b <- c(rep(1,4),
       rep(0,6)) # true regression weights
y <- X%*%matrix(b,ncol = 1) + rnorm(N,0,.2)

# First, we must construct a fiting function
# which returns a single value. We will use
# the residual sum squared as fitting function.

# Let's start setting up the fitting function:
fittingFunction <- function(par, y, X, N){
  # par is the parameter vector
  # y is the observed dependent variable
  # X is the design matrix
  # N is the sample size
  pred <- X %*% matrix(par, ncol = 1) #be explicit here:
  # we need par to be a column vector
  sse <- sum((y - pred)^2)
  # we scale with .5/N to get the same results as glmnet
  return((.5/N)*sse)
}

# let's define the starting values:
b <- c(solve(t(X)%*%X)%*%t(X)%*%y) # we will use the lm estimates
names(b) <- paste0("b", 1:length(b))
# names of regularized parameters
regularized <- paste0("b",1:p)

# optimize
lspPen <- gpLsp(
  par = b,
  regularized = regularized,
  fn = fittingFunction,
  lambdas = seq(0,1,.1),
  thetas = c(0.001, .5, 1),
  X = X,
  y = y,
  N = N
)

# optional: plot requires plotly package
# plot(lspPen)

# for comparison

fittingFunction <- function(par, y, X, N, lambda, theta){
  pred <- X %*% matrix(par, ncol = 1)
  sse <- sum((y - pred)^2)
  smoothAbs <- sqrt(par^2 + 1e-8)
  pen <- lambda * log(1.0 + smoothAbs / theta)
  return((.5/N)*sse + sum(pen))
}

round(
  optim(par = b,
      fn = fittingFunction,
      y = y,
      X = X,
      N = N,
      lambda =  lspPen@fits$lambda[15],
      theta =  lspPen@fits$theta[15],
      method = "BFGS")$par,
  4)
lspPen@parameters[15,]

[Package lessSEM version 1.5.5 Index]