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owl

Outcome Weighted Learning


Description

Outcome Weighted Learning

Usage

owl(
  ...,
  moPropen,
  data,
  reward,
  txName,
  regime,
  response,
  lambdas = 2,
  cvFolds = 0L,
  kernel = "linear",
  kparam = NULL,
  surrogate = "hinge",
  verbose = 2L
)

Arguments

...

Used primarily to require named input. However, inputs for the optimization methods can be sent through the ellipsis. If surrogate is hinge, the optimization method is kernlab::ipop(). For all other surrogates, stats::optim() is used.

moPropen

An object of class modelObj, which defines the model and R methods to be used to obtain parameter estimates and predictions for the propensity for treatment. See ?moPropen for details.

data

A data frame of the covariates and tx histories

reward

The response vector

txName

A character object. The column header of data that corresponds to the tx covariate

regime

A formula object or a character vector. The covariates to be included in classification

response

A numeric vector. The reward. Allows for naming convention followed in most DynTxRegime methods.

lambdas

A numeric object or a numeric vector object giving the penalty tuning parameter. If more than 1 is provided, the finite set of values to be considered in the cross-validation algorithm

cvFolds

If cross-validation is to be used to select the tuning parameters, the number of folds.

kernel

A character object. must be one of linear, poly, radial

kparam

A numeric object of NULL. If kernel = linear, kparam is ignored. If kernel = poly, kparam is the degree of the polynomial If kernel = radial, kparam is the inverse bandwidth of the kernel. If a vector of bandwidth parameters is given, cross-validation will be used to select the parameter

surrogate

The surrogate 0-1 loss function must be one of logit, exp, hinge, sqhinge, huber

verbose

An integer or logical. If 0, no screen prints are generated. If 1, screen prints are generated with the exception of optimization results obtained in iterative algorithm. If 2, all screen prints are generated.

Value

an OWL object

References

Yingqi Zhao, Donglin Zeng, A. John Rush, Michael R. Kosorok (2012) Estimated individualized treatment rules using outcome weighted learning. Journal of the American Statistical Association, 107(409): 1106-1118. PMCID: 3636816

See Also

Other statistical methods: bowl(), earl(), iqLearn, optimalClass(), optimalSeq(), qLearn(), rwl()

Other weighted learning methods: bowl(), earl(), rwl()

Other single decision point methods: earl(), optimalClass(), optimalSeq(), qLearn(), rwl()

Examples

# Load and process data set
data(bmiData)

# define the negative 12 month change in BMI from baseline
y12 <- -100*(bmiData[,6L] - bmiData[,4L])/bmiData[,4L]

# propensity model
moPropen <- buildModelObj(model = ~parentBMI+month4BMI,
                          solver.method = 'glm',
                          solver.args = list('family'='binomial'),
                          predict.method = 'predict.glm',
                          predict.args = list(type='response'))

fitOWL <- owl(moPropen = moPropen,
              data = bmiData, reward = y12,  txName = 'A2', 
              regime = ~ parentBMI + month4BMI,
              surrogate = 'hinge', kernel = 'linear', kparam = NULL)

##Available methods

  # Coefficients of the propensity score regression
  coef(fitOWL)

  # Description of method used to obtain object
  DTRstep(fitOWL)

  # Estimated value of the optimal treatment regime for training set
  estimator(fitOWL)

  # Value object returned by propensity score regression method
  fitObject(fitOWL)

  # Summary of optimization routine
  optimObj(fitOWL)

  # Estimated optimal treatment for training data
  optTx(fitOWL)

  # Estimated optimal treatment for new data
  optTx(fitOWL, bmiData)

  # Plots if defined by propensity regression method
  dev.new()
  par(mfrow = c(2,4))

  plot(fitOWL)
  plot(fitOWL, suppress = TRUE)

  # Value object returned by propensity score regression method
  propen(fitOWL)

  # Parameter estimates for decision function
  regimeCoef(fitOWL)

  # Show main results of method
  show(fitOWL)

  # Show summary results of method
  summary(fitOWL)

DynTxRegime

Methods for Estimating Optimal Dynamic Treatment Regimes

v4.10
GPL-2
Authors
S. T. Holloway, E. B. Laber, K. A. Linn, B. Zhang, M. Davidian, and A. A. Tsiatis
Initial release
2022-06-05

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