A B C D E G M N O P Q S T U misc
| adoptr | Adaptive Optimal Two-Stage Designs |
| AverageN2 | Regularization via L1 norm |
| AverageN2-class | Regularization via L1 norm |
| Binomial | Binomial data distribution |
| Binomial-class | Binomial data distribution |
| bounds | Get support of a prior or data distribution |
| bounds-method | Get support of a prior or data distribution |
| c2 | Query critical values of a design |
| c2-method | Query critical values of a design |
| composite | Score Composition |
| condition | Condition a prior on an interval |
| condition-method | Condition a prior on an interval |
| ConditionalPower | (Conditional) Power of a Design |
| ConditionalPower-class | (Conditional) Power of a Design |
| ConditionalSampleSize | (Conditional) Sample Size of a Design |
| ConditionalSampleSize-class | (Conditional) Sample Size of a Design |
| ConstraintCollection | Create a collection of constraints |
| Constraints | Formulating Constraints |
| ContinuousPrior | Continuous univariate prior distributions |
| ContinuousPrior-class | Continuous univariate prior distributions |
| cumulative_distribution_function | Cumulative distribution function |
| cumulative_distribution_function-method | Cumulative distribution function |
| DataDistribution | Data distributions |
| DataDistribution-class | Data distributions |
| evaluate | Scores |
| evaluate-method | Regularization via L1 norm |
| evaluate-method | (Conditional) Power of a Design |
| evaluate-method | (Conditional) Sample Size of a Design |
| evaluate-method | Formulating Constraints |
| evaluate-method | Maximum Sample Size of a Design |
| evaluate-method | Regularize n1 |
| evaluate-method | Scores |
| evaluate-method | Score Composition |
| evaluate-method | Create a collection of constraints |
| expectation | Expected value of a function |
| expectation-method | Expected value of a function |
| expected | Scores |
| expected-method | Scores |
| ExpectedSampleSize | (Conditional) Sample Size of a Design |
| get_initial_design | Initial design |
| get_lower_boundary_design | Boundary designs |
| get_lower_boundary_design-method | Boundary designs |
| get_upper_boundary_design | Boundary designs |
| get_upper_boundary_design-method | Boundary designs |
| GroupSequentialDesign | Group-sequential two-stage designs |
| GroupSequentialDesign-class | Group-sequential two-stage designs |
| make_fixed | Fix parameters during optimization |
| make_fixed-method | Fix parameters during optimization |
| make_tunable | Fix parameters during optimization |
| make_tunable-method | Fix parameters during optimization |
| MaximumSampleSize | Maximum Sample Size of a Design |
| MaximumSampleSize-class | Maximum Sample Size of a Design |
| minimize | Find optimal two-stage design by constraint minimization |
| n | Query sample size of a design |
| n-method | Query sample size of a design |
| N1 | Regularize n1 |
| n1 | Query sample size of a design |
| N1-class | Regularize n1 |
| n1-method | Query sample size of a design |
| n2 | Query sample size of a design |
| n2-method | Query sample size of a design |
| Normal | Normal data distribution |
| Normal-class | Normal data distribution |
| OneStageDesign | One-stage designs |
| OneStageDesign-class | One-stage designs |
| plot-method | One-stage designs |
| plot-method | Plot 'TwoStageDesign' with optional set of conditional scores |
| PointMassPrior | Univariate discrete point mass priors |
| PointMassPrior-class | Univariate discrete point mass priors |
| posterior | Compute posterior distribution |
| posterior-method | Compute posterior distribution |
| Power | (Conditional) Power of a Design |
| predictive_cdf | Predictive CDF |
| predictive_cdf-method | Predictive CDF |
| predictive_pdf | Predictive PDF |
| predictive_pdf-method | Predictive PDF |
| Printing an optimization result | |
| print.adoptrOptimizationResult | Printing an optimization result |
| Prior | Univariate prior on model parameter |
| Prior-class | Univariate prior on model parameter |
| probability_density_function | Probability density function |
| probability_density_function-method | Probability density function |
| quantile-method | Binomial data distribution |
| quantile-method | Normal data distribution |
| quantile-method | Student's t data distribution |
| Scores | Scores |
| simulate-method | Binomial data distribution |
| simulate-method | Normal data distribution |
| simulate-method | Student's t data distribution |
| simulate-method | Draw samples from a two-stage design |
| Student | Student's t data distribution |
| Student-class | Student's t data distribution |
| subject_to | Create a collection of constraints |
| summary-method | Two-stage designs |
| tunable_parameters | Switch between numeric and S4 class representation of a design |
| tunable_parameters-method | Switch between numeric and S4 class representation of a design |
| TwoStageDesign | Two-stage designs |
| TwoStageDesign-class | Two-stage designs |
| TwoStageDesign-method | Group-sequential two-stage designs |
| TwoStageDesign-method | One-stage designs |
| TwoStageDesign-method | Two-stage designs |
| update-method | Switch between numeric and S4 class representation of a design |
| <=-method | Formulating Constraints |
| >=-method | Formulating Constraints |