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Reinforcement Learning Trees.

  • Read more about Reinforcement Learning Trees.

iqLearn: Interactive Q-Learning in R.

  • Read more about iqLearn: Interactive Q-Learning in R.

OTRselect: Variable selection for optimal treatment decision (R).

  • Read more about OTRselect: Variable selection for optimal treatment decision (R).

Value search estimators for optimal dynamic treatment regimes.

  • Read more about Value search estimators for optimal dynamic treatment regimes.

Dynamic treatment regimes.

  • Read more about Dynamic treatment regimes.

RAMSVM: Reinforced angle-based multicategory support vector machines (R).

  • Read more about RAMSVM: Reinforced angle-based multicategory support vector machines (R).

Estimation of dynamic treatment regimes for complex outcomes: Balancing benefits and risks.

  • Read more about Estimation of dynamic treatment regimes for complex outcomes: Balancing benefits and risks.

Spatial regression with covariate measurement error: A semiparametric approach.

  • Read more about Spatial regression with covariate measurement error: A semiparametric approach.

cSFM: Covariate-adjusted skewed functional model (R).

  • Read more about cSFM: Covariate-adjusted skewed functional model (R).

Variable Selection for Support Vector Machines in Moderately High Dimensions.

  • Read more about Variable Selection for Support Vector Machines in Moderately High Dimensions.

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